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unmask]> From: Mark Speight <[log in to unmask]> Subject: Modelling Millet and Sorghum Content-Type: multipart/alternative; boundary="_000_6DE53889F2B9D2438078845DB711C3B6070BF759EXSHAMBX2adsusx_" MIME-Version: 1.0 Message-ID: <[log in to unmask]> --_000_6DE53889F2B9D2438078845DB711C3B6070BF759EXSHAMBX2adsusx_ Content-Type: text/plain; charset="us-ascii" Content-Transfer-Encoding: quoted-printable Dear all, I have just conducted a survey of farming practice in Kitui county Kenya, t= he farmers are reporting to grow millet and sorghum. I want to model these using DSSAT, but I'm sceptical given that DSSAT speci= fies "Pearl millet" and "Grain sorghum" instead of just millet and sorghum. Am I able to used DSSAT to model millet and sorghum, or do they need to be = specifically pearl millet and grain sorghum? All comments will be appreciated. Also, if anyone else is doing modelling in Kenya, I will be happy to collab= orate and share data. Thanks in advance, Mark Mark Speight PhD Candidate School of Global Studies University of Sussex Falmer 01273 877462 --_000_6DE53889F2B9D2438078845DB711C3B6070BF759EXSHAMBX2adsusx_ Content-Type: text/html; charset="us-ascii" Content-Transfer-Encoding: quoted-printable <html xmlns:v=3D"urn:schemas-microsoft-com:vml" xmlns:o=3D"urn:schemas-micr= osoft-com:office:office" xmlns:w=3D"urn:schemas-microsoft-com:office:word" = xmlns:m=3D"http://schemas.microsoft.com/office/2004/12/omml" xmlns=3D"http:= //www.w3.org/TR/REC-html40"> <head> <meta http-equiv=3D"Content-Type" content=3D"text/html; charset=3Dus-ascii"= > <meta name=3D"Generator" content=3D"Microsoft Word 15 (filtered medium)"> <style><!-- /* Font Definitions */ @font-face {font-family:SimSun; panose-1:2 1 6 0 3 1 1 1 1 1;} @font-face {font-family:"Cambria Math"; panose-1:2 4 5 3 5 4 6 3 2 4;} @font-face {font-family:Calibri; panose-1:2 15 5 2 2 2 4 3 2 4;} @font-face {font-family:"\@SimSun"; panose-1:2 1 6 0 3 1 1 1 1 1;} /* Style Definitions */ p.MsoNormal, li.MsoNormal, div.MsoNormal {margin:0cm; margin-bottom:.0001pt; font-size:11.0pt; font-family:"Calibri",sans-serif;} a:link, span.MsoHyperlink {mso-style-priority:99; color:#0563C1; text-decoration:underline;} a:visited, span.MsoHyperlinkFollowed {mso-style-priority:99; color:#954F72; text-decoration:underline;} span.EmailStyle17 {mso-style-type:personal-compose; font-family:"Calibri",sans-serif; color:windowtext;} .MsoChpDefault {mso-style-type:export-only; font-family:"Calibri",sans-serif;} @page WordSection1 {size:612.0pt 792.0pt; margin:72.0pt 72.0pt 72.0pt 72.0pt;} div.WordSection1 {page:WordSection1;} --></style><!--[if gte mso 9]><xml> <o:shapedefaults v:ext=3D"edit" spidmax=3D"1026" /> </xml><![endif]--><!--[if gte mso 9]><xml> <o:shapelayout v:ext=3D"edit"> <o:idmap v:ext=3D"edit" data=3D"1" /> </o:shapelayout></xml><![endif]--> </head> <body lang=3D"EN-GB" link=3D"#0563C1" vlink=3D"#954F72"> <div class=3D"WordSection1"> <p class=3D"MsoNormal">Dear all,<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">I have just conducted a survey of farming practice i= n Kitui county Kenya, the farmers are reporting to grow millet and sorghum.= <o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">I want to model these using DSSAT, but I’m sce= ptical given that DSSAT specifies “Pearl millet” and “Gra= in sorghum” instead of just millet and sorghum.<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">Am I able to used DSSAT to model millet and sorghum,= or do they need to be specifically pearl millet and grain sorghum?<o:p></o= :p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">All comments will be appreciated.<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">Also, if anyone else is doing modelling in Kenya, I = will be happy to collaborate and share data.<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">Thanks in advance,<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">Mark<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">Mark Speight<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">PhD Candidate<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">School of Global Studies<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">University of Sussex<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">Falmer<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal">01273 877462<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> </div> </body> </html> --_000_6DE53889F2B9D2438078845DB711C3B6070BF759EXSHAMBX2adsusx_-- ========================================================================= Date: Fri, 21 Oct 2016 13:53:55 +0000 Sender: DSSAT - Crop Models and Applications <[log in to unmask]> From: "Boote,Kenneth J" <[log in to unmask]> Subject: Re: Modelling Millet and Sorghum Comments: To: Mark Speight <[log in to unmask]> Comments: cc: "Hoogenboom,Gerrit" <[log in to unmask]>, "White, Jeffrey - ARS" <[log in to unmask]> In-Reply-To: <[log in to unmask]> Content-Type: multipart/alternative; boundary="_000_847828d9fee0492fb0accb1c2c290abfexmbxprd04adufledu_" MIME-Version: 1.0 Message-ID: <[log in to unmask]> --_000_847828d9fee0492fb0accb1c2c290abfexmbxprd04adufledu_ Content-Type: text/plain; charset="us-ascii" Content-Transfer-Encoding: quoted-printable Mark, I think you can just think sorghum and millet. But I give a few details be= low. Even though it may be called grain sorghum in DSSAT, I believe the model ca= n simulate the fodder sorghum types (tall, low harvest index) as well by th= e setting of partitioning to grain and extent of daylength delay prior to a= nthesis, although I want Jeff White and Gerrit Hoogenboom to also respond t= o this. One question is what is grown in Kenya. The Pearl millet model simulations in DSSAT, I think, are mostly the equiva= lent of the grain types grown in West Africa and India. This may be contra= sted to the nearly completely vegetative types used for fodder in some regi= ons. However, by changing one genetic coefficient, G4 (partitioning coeffi= cient between 0 to 1) can make it run all the way from almost totally veget= ative to 100% partitioning to grain after anthesis. So it is flexible. So= go ahead and try it. Sincerely, Ken Boote From: DSSAT - Crop Models and Applications [mailto:[log in to unmask]] = On Behalf Of Mark Speight Sent: Thursday, October 20, 2016 6:08 AM To: [log in to unmask] Subject: Modelling Millet and Sorghum Dear all, I have just conducted a survey of farming practice in Kitui county Kenya, t= he farmers are reporting to grow millet and sorghum. I want to model these using DSSAT, but I'm sceptical given that DSSAT speci= fies "Pearl millet" and "Grain sorghum" instead of just millet and sorghum. Am I able to used DSSAT to model millet and sorghum, or do they need to be = specifically pearl millet and grain sorghum? All comments will be appreciated. Also, if anyone else is doing modelling in Kenya, I will be happy to collab= orate and share data. Thanks in advance, Mark Mark Speight PhD Candidate School of Global Studies University of Sussex Falmer 01273 877462 --_000_847828d9fee0492fb0accb1c2c290abfexmbxprd04adufledu_ Content-Type: text/html; charset="us-ascii" Content-Transfer-Encoding: quoted-printable <html xmlns:v=3D"urn:schemas-microsoft-com:vml" xmlns:o=3D"urn:schemas-micr= osoft-com:office:office" xmlns:w=3D"urn:schemas-microsoft-com:office:word" = xmlns:x=3D"urn:schemas-microsoft-com:office:excel" xmlns:m=3D"http://schema= s.microsoft.com/office/2004/12/omml" xmlns=3D"http://www.w3.org/TR/REC-html= 40"> <head> <meta http-equiv=3D"Content-Type" content=3D"text/html; charset=3Dus-ascii"= > <meta name=3D"Generator" content=3D"Microsoft Word 14 (filtered medium)"> <style><!-- /* Font Definitions */ @font-face {font-family:Calibri; panose-1:2 15 5 2 2 2 4 3 2 4;} @font-face {font-family:Tahoma; panose-1:2 11 6 4 3 5 4 4 2 4;} /* Style Definitions */ p.MsoNormal, li.MsoNormal, div.MsoNormal {margin:0in; margin-bottom:.0001pt; font-size:11.0pt; font-family:"Calibri","sans-serif";} a:link, span.MsoHyperlink {mso-style-priority:99; color:#0563C1; text-decoration:underline;} a:visited, span.MsoHyperlinkFollowed {mso-style-priority:99; color:#954F72; text-decoration:underline;} span.EmailStyle17 {mso-style-type:personal; font-family:"Calibri","sans-serif"; color:windowtext;} span.EmailStyle18 {mso-style-type:personal-reply; font-family:"Calibri","sans-serif"; color:black;} .MsoChpDefault {mso-style-type:export-only; font-size:10.0pt;} @page WordSection1 {size:8.5in 11.0in; margin:1.0in 1.0in 1.0in 1.0in;} div.WordSection1 {page:WordSection1;} --></style><!--[if gte mso 9]><xml> <o:shapedefaults v:ext=3D"edit" spidmax=3D"1026" /> </xml><![endif]--><!--[if gte mso 9]><xml> <o:shapelayout v:ext=3D"edit"> <o:idmap v:ext=3D"edit" data=3D"1" /> </o:shapelayout></xml><![endif]--> </head> <body lang=3D"EN-US" link=3D"#0563C1" vlink=3D"#954F72"> <div class=3D"WordSection1"> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black">Mark,<o= :p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black"><o:p>&n= bsp;</o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black">I think= you can just think sorghum and millet. But I give a few details belo= w.<o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black"><o:p>&n= bsp;</o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black">Even th= ough it may be called grain sorghum in DSSAT, I believe the model can simul= ate the fodder sorghum types (tall, low harvest index) as well by the setti= ng of partitioning to grain and extent of daylength delay prior to anthesis, although I want Jeff White and Gerri= t Hoogenboom to also respond to this. One question is what is g= rown in Kenya. <o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black"><o:p>&n= bsp;</o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black">The Pea= rl millet model simulations in DSSAT, I think, are mostly the equivalent of= the grain types grown in West Africa and India. This may be contrast= ed to the nearly completely vegetative types used for fodder in some regions. However, by changing one genetic co= efficient, G4 (partitioning coefficient between 0 to 1) can make it run all= the way from almost totally vegetative to 100% partitioning to grain after= anthesis. So it is flexible. So go ahead and try it.<o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black"><o:p>&n= bsp;</o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black">Sincere= ly,<o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black">Ken Boo= te<o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black"><o:p>&n= bsp;</o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black"><o:p>&n= bsp;</o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:13.0pt;color:black"><o:p>&n= bsp;</o:p></span></p> <div> <div style=3D"border:none;border-top:solid #B5C4DF 1.0pt;padding:3.0pt 0in = 0in 0in"> <p class=3D"MsoNormal"><b><span style=3D"font-size:10.0pt;font-family:"= ;Tahoma","sans-serif"">From:</span></b><span style=3D"font-s= ize:10.0pt;font-family:"Tahoma","sans-serif""> DSSAT - = Crop Models and Applications [mailto:[log in to unmask]] <b>On Behalf Of </b>Mark Speight<br> <b>Sent:</b> Thursday, October 20, 2016 6:08 AM<br> <b>To:</b> [log in to unmask]<br> <b>Subject:</b> Modelling Millet and Sorghum<o:p></o:p></span></p> </div> </div> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">Dear all,<o:p></o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">I have just conducted a survey = of farming practice in Kitui county Kenya, the farmers are reporting to gro= w millet and sorghum.<o:p></o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">I want to model these using DSS= AT, but I’m sceptical given that DSSAT specifies “Pearl millet&= #8221; and “Grain sorghum” instead of just millet and sorghum.<= o:p></o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">Am I able to used DSSAT to mode= l millet and sorghum, or do they need to be specifically pearl millet and g= rain sorghum?<o:p></o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">All comments will be appreciate= d.<o:p></o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">Also, if anyone else is doing m= odelling in Kenya, I will be happy to collaborate and share data.<o:p></o:p= ></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">Thanks in advance,<o:p></o:p></= span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">Mark<o:p></o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">Mark Speight<o:p></o:p></span><= /p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">PhD Candidate<o:p></o:p></span>= </p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">School of Global Studies<o:p></= o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">University of Sussex<o:p></o:p>= </span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">Falmer<o:p></o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB">01273 877462<o:p></o:p></span><= /p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span lang=3D"EN-GB"><o:p> </o:p></span></p> </div> </body> </html> --_000_847828d9fee0492fb0accb1c2c290abfexmbxprd04adufledu_-- ========================================================================= Date: Fri, 21 Oct 2016 09:00:27 -0500 Sender: DSSAT - Crop Models and Applications <[log in to unmask]> From: Dale Rankine <[log in to unmask]> Subject: Re: Modelling Millet and Sorghum Comments: To: Mark Speight <[log in to unmask]> In-Reply-To: <[log in to unmask]> MIME-Version: 1.0 Content-Type: multipart/alternative; boundary=001a113f323cecd3b5053f6076b4 Message-ID: <[log in to unmask]> --001a113f323cecd3b5053f6076b4 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: quoted-printable Dear Mark In the general approach, you can use the parameters developed for the two crops and refine (using the GLUE tool) to get a better fit between measured and simulated data. Once you have satisfactory results you can save the crop profiles as your own. But you must have good and accurate information/data about the varieties that you are interested in. It is also important to have the crop season wewtjer data if the closest weather station. I am sure others more knowlegeable will provide more astute guidance. I will say though that having the crop type already in DSSSAT is a great start. Sometimes you don't have that and just have to go with the closest crop to yours. So try to use the profiles and see what you get. Regards Dale On Oct 21, 2016 8:44 AM, "Mark Speight" <[log in to unmask]> wrote: > Dear all, > > > > I have just conducted a survey of farming practice in Kitui county Kenya, > the farmers are reporting to grow millet and sorghum. > > > > I want to model these using DSSAT, but I=E2=80=99m sceptical given that D= SSAT > specifies =E2=80=9CPearl millet=E2=80=9D and =E2=80=9CGrain sorghum=E2=80= =9D instead of just millet and > sorghum. > > > > Am I able to used DSSAT to model millet and sorghum, or do they need to b= e > specifically pearl millet and grain sorghum? > > > > All comments will be appreciated. > > > > > > > > Also, if anyone else is doing modelling in Kenya, I will be happy to > collaborate and share data. > > > > Thanks in advance, > > > > Mark > > > > > > > > Mark Speight > > > > PhD Candidate > > > > School of Global Studies > > > > University of Sussex > > > > Falmer > > > > 01273 877462 > > > > > > > > > --001a113f323cecd3b5053f6076b4 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable <p dir=3D"ltr">Dear Mark</p> <p dir=3D"ltr">In the general approach, you can use the parameters develope= d for the two crops and refine (using the GLUE tool) to get a better fit be= tween measured and simulated data. Once you have satisfactory results you c= an save the crop profiles as your own.</p> <p dir=3D"ltr">But you must have good and accurate information/data about t= he varieties that you are interested in. It is also important to have the c= rop season wewtjer data if the closest weather station. I am sure others mo= re knowlegeable will provide more astute guidance. </p> <p dir=3D"ltr">I will say though that having the crop type already in DSSSA= T is a great start. Sometimes you don't have that and just have to go w= ith the closest crop to yours.</p> <p dir=3D"ltr">So try to use the profiles and see what you get.</p> <p dir=3D"ltr">Regards<br> Dale</p> <div class=3D"gmail_extra"><br><div class=3D"gmail_quote">On Oct 21, 2016 8= :44 AM, "Mark Speight" <<a href=3D"mailto:[log in to unmask]">= [log in to unmask]</a>> wrote:<br type=3D"attribution"><blockquote class= =3D"gmail_quote" style=3D"margin:0 0 0 .8ex;border-left:1px #ccc solid;padd= ing-left:1ex"> <div lang=3D"EN-GB" link=3D"#0563C1" vlink=3D"#954F72"> <div class=3D"m_-651405721241980409WordSection1"> <p class=3D"MsoNormal">Dear all,<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">I have just conducted a survey of farming practice i= n Kitui county Kenya, the farmers are reporting to grow millet and sorghum.= <u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">I want to model these using DSSAT, but I=E2=80=99m s= ceptical given that DSSAT specifies =E2=80=9CPearl millet=E2=80=9D and =E2= =80=9CGrain sorghum=E2=80=9D instead of just millet and sorghum.<u></u><u><= /u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">Am I able to used DSSAT to model millet and sorghum,= or do they need to be specifically pearl millet and grain sorghum?<u></u><= u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">All comments will be appreciated.<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">Also, if anyone else is doing modelling in Kenya, I = will be happy to collaborate and share data.<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">Thanks in advance,<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">Mark<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">Mark Speight<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">PhD Candidate<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">School of Global Studies<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">University of Sussex<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">Falmer<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal">01273 877462<u></u><u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> <p class=3D"MsoNormal"><u></u>=C2=A0<u></u></p> </div> </div> </blockquote></div></div> --001a113f323cecd3b5053f6076b4-- ========================================================================= Date: Sat, 22 Oct 2016 22:39:35 +0200 Sender: DSSAT - Crop Models and Applications <[log in to unmask]> From: Wallach Daniel <[log in to unmask]> Subject: A survey about crop model calibration MIME-Version: 1.0 Content-Type: multipart/alternative; boundary="------------3EDBAF983F6593775585FF3E" Message-ID: <[log in to unmask]> This is a multi-part message in MIME format. --------------3EDBAF983F6593775585FF3E Content-Type: text/plain; charset=utf-8; format=flowed Content-Transfer-Encoding: 8bit A survey about your experience with crop model calibration If you have been responsible for calibration of a crop model, we are asking you to take the time to fill out this survey (here <https://bildungsportal.sachsen.de/survey/limesurvey/index.php/373781/lang/en/newtest/Y>). Calibration, or parameter estimation, is a difficult but critical aspect of a crop modeling project: Predictions from a model are heavily dependent on the parameter values used in the model. Despite its importance little attention has been paid to the approaches to calibration used by different crop modelers.Progress towards improving methods of calibration and setting out guidelines of good practices could make a real difference to the usefulness of crop models. That is the goal of the calibration activity of the AgMIP/MACSUR projects. This survey is the first step of the calibration activity. It aims at establishing a baseline; recording the current practices in crop model calibration across the crop modeling community. Following the survey we will collate the results in a report on current methods, which will be shared with all respondents, with a view of possibly extending it to a scientific paper. In future steps of the activity we will compare various methods of calibration, accompanied by discussion as to the ways to evaluate them. These activities will be open to all who want to participate (respondents to this survey will be kept informed), in order to tap into the wealth of experience accumulated by crop model developers and users around the world. If you have been responsible for a crop model calibration activity, please take the time (about 20 minutes) to respond to this survey. As thanks, respondents will receive a complimentary electronic copy of the chapter “Parameter Estimation with Classical methods (Model Calibration)” of the book Working with Dynamic Crop Models, 2nd edition. The survey is open until midnight November 30, 2016. If you have any questions, please contact Sabine Seidel ([log in to unmask] <mailto:[log in to unmask]>). Thank you for your participation, the crop model calibration project co-leaders: Daniel Wallach (INRA, France), Taru Palosuo (Luke, Finland), Sabine Seidel (INRES, University of Bonn, Germany), Peter Thorburn (CSIRO, Australia). *P.S. If you have been responsible for multiple calibration studies, please answer this survey for just one specific study (one data set, one model, one set of calibrated parameters), the one that you feel could be most useful to others.* -- Daniel Wallach Chargé de mission INRA, UMR AGIR, Castanet Tolosan, France Guest Professor, Nanjing Agricultural University Collaborating Professor, Agricultural and Biological Engineering, University of Florida --------------3EDBAF983F6593775585FF3E Content-Type: text/html; charset=utf-8 Content-Transfer-Encoding: 8bit <html> <head> <meta http-equiv="content-type" content="text/html; charset=utf-8"> </head> <body bgcolor="#FFFFFF" text="#000000"> <p> <meta http-equiv="Content-Type" content="text/html; charset=utf-8"> </p> <p> <meta name="ProgId" content="Word.Document"> <meta name="Generator" content="Microsoft Word 14"> <meta name="Originator" content="Microsoft Word 14"> <link rel="File-List" 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mso-style-priority:99; mso-style-parent:""; mso-padding-alt:0cm 5.4pt 0cm 5.4pt; mso-para-margin-top:0cm; mso-para-margin-right:0cm; mso-para-margin-bottom:10.0pt; mso-para-margin-left:0cm; line-height:115%; mso-pagination:widow-orphan; font-size:11.0pt; font-family:"Calibri","sans-serif"; mso-ascii-font-family:Calibri; mso-ascii-theme-font:minor-latin; mso-hansi-font-family:Calibri; mso-hansi-theme-font:minor-latin;} </style> <![endif]--> </p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt: auto;margin-left:30.0pt;text-align:center;text-indent:0cm" align="center"><span style="mso-bidi-font-size:12.0pt;mso-fareast-font-family:"Times New Roman"; mso-bidi-font-family:"Times New Roman"">A survey about your experience with crop model calibration<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">If you have been responsible for calibration of a crop model, we are asking you to take the time to fill out this survey (</span><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman""><a href="https://bildungsportal.sachsen.de/survey/limesurvey/index.php/373781/lang/en/newtest/Y">here</a>).<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">Calibration, or parameter estimation, is a difficult but critical aspect of a crop modeling project: Predictions from a model are heavily dependent on the parameter values used in the model. Despite its importance little attention has been paid to the approaches to calibration used by different crop modelers.<span style="mso-spacerun:yes"> </span>Progress towards improving methods of calibration and setting out guidelines of good practices could make a real difference to the usefulness of crop models. That is the goal of the calibration activity of the AgMIP/MACSUR projects. <span style="mso-spacerun:yes"> </span><o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">This survey is the first step of the calibration activity. It aims at establishing a baseline; recording the current practices in crop model calibration across the crop modeling community. Following the survey we will collate the results in a report on current methods, which will be shared with all respondents, with a view of possibly extending it to a scientific paper. <o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">In future steps of the activity we will compare various methods of calibration, accompanied by discussion as to the ways to evaluate them. These activities will be open to all who want to participate (respondents to this survey will be kept informed), in order to tap into the wealth of experience accumulated by crop model developers and users around the world.<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">If you have been responsible for a crop model calibration activity, please take the time (about 20 minutes) to respond to this survey. As thanks, respondents will receive a complimentary electronic copy of the chapter “Parameter Estimation with Classical methods (Model Calibration)” of the book Working with Dynamic Crop Models, 2nd edition.<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">The survey is open until midnight November 30, 2016. <o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">If you have any questions, please contact Sabine Seidel (</span><a href="mailto:[log in to unmask]"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">[log in to unmask]</span></a><span style="mso-bidi-font-size:12.0pt;mso-fareast-font-family:"Times New Roman"; mso-bidi-font-family:"Times New Roman"">).<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">Thank you for your participation, the crop model calibration project co-leaders:<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">Daniel Wallach (INRA, France),<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">Taru Palosuo (Luke, Finland),<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">Sabine Seidel (INRES, University of Bonn, Germany),<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">Peter Thorburn (CSIRO, Australia).<o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><b style="mso-bidi-font-weight: normal"><span style="font-size:14.0pt;mso-bidi-font-size:12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman"">P.S. If you have been responsible for multiple calibration studies, please answer this survey for just one specific study (one data set, one model, one set of calibrated parameters), the one that you feel could be most useful to others.<o:p></o:p></span></b></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman""> <o:p></o:p></span></p> <p class="MsoNormal" style="mso-margin-top-alt:auto;mso-margin-bottom-alt:auto; margin-left:30.0pt;text-align:justify;text-indent:0cm"><span style="mso-bidi-font-size: 12.0pt;mso-fareast-font-family:"Times New Roman";mso-bidi-font-family:"Times New Roman""><o:p> </o:p></span></p> <p class="MsoNormal"><o:p> </o:p></p> <br> <pre class="moz-signature" cols="72">-- Daniel Wallach Chargé de mission INRA, UMR AGIR, Castanet Tolosan, France Guest Professor, Nanjing Agricultural University Collaborating Professor, Agricultural and Biological Engineering, University of Florida </pre> </body> </html> --------------3EDBAF983F6593775585FF3E-- ========================================================================= Date: Mon, 24 Oct 2016 14:46:25 +0000 Sender: DSSAT - Crop Models and Applications <[log in to unmask]> From: Stewart Collis <[log in to unmask]> Subject: aWhere seeks an Agronomic Modeler Content-Type: multipart/related; boundary="_006_BLUPR08MB5181A15C3F1B462B787E002DDA90BLUPR08MB518namprd_"; type="multipart/alternative" MIME-Version: 1.0 Message-ID: <[log in to unmask]> --_006_BLUPR08MB5181A15C3F1B462B787E002DDA90BLUPR08MB518namprd_ Content-Type: multipart/alternative; boundary="_000_BLUPR08MB5181A15C3F1B462B787E002DDA90BLUPR08MB518namprd_" --_000_BLUPR08MB5181A15C3F1B462B787E002DDA90BLUPR08MB518namprd_ Content-Type: text/plain; charset="us-ascii" Content-Transfer-Encoding: quoted-printable Please see the following link if you would be interested in joining an inno= vative team and company where you can combine your background in agricultur= e and modeling with data science. http://www.awhere.com/about/careers Stewart Collis Chief Technology Officer aWhere Inc. Office: 1+919.537.8952 Ext.501 Cell: 919.265.9410 Fax:919.240.5443 Email: [log in to unmask]<mailto:[log in to unmask]> Connect on LinkedIn<https://www.linkedin.com/in/stewartcollis> 3710 University Drive, Suite 300 Durham, NC, 27707 [cid:image001.png@01D046E4.80976E40] Stay Connected! [Twitter icon] <https://twitter.com/aWhere> [LinkedIN Icon] <http://www= .linkedin.com/company/awhere-inc.?trk=3Dcp_followed_name_awhere-inc%2E> --_000_BLUPR08MB5181A15C3F1B462B787E002DDA90BLUPR08MB518namprd_ Content-Type: text/html; charset="us-ascii" Content-Transfer-Encoding: quoted-printable <html xmlns:v=3D"urn:schemas-microsoft-com:vml" xmlns:o=3D"urn:schemas-micr= osoft-com:office:office" xmlns:w=3D"urn:schemas-microsoft-com:office:word" = xmlns:m=3D"http://schemas.microsoft.com/office/2004/12/omml" xmlns=3D"http:= //www.w3.org/TR/REC-html40"> <head> <meta http-equiv=3D"Content-Type" content=3D"text/html; charset=3Dus-ascii"= > <meta name=3D"Generator" content=3D"Microsoft Word 15 (filtered medium)"> <!--[if !mso]><style>v\:* {behavior:url(#default#VML);} o\:* {behavior:url(#default#VML);} w\:* {behavior:url(#default#VML);} .shape {behavior:url(#default#VML);} </style><![endif]--><style><!-- /* Font Definitions */ @font-face {font-family:"Cambria Math"; panose-1:2 4 5 3 5 4 6 3 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</head> <body lang=3D"EN-US" link=3D"#0563C1" vlink=3D"#954F72"> <div class=3D"WordSection1"> <p class=3D"MsoNormal">Please see the following link if you would be intere= sted in joining an innovative team and company where you can combine your b= ackground in agriculture and modeling with data science.<o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><a href=3D"http://www.awhere.com/about/careers">http= ://www.awhere.com/about/careers</a> <o:p></o:p></p> <p class=3D"MsoNormal"><o:p> </o:p></p> <p class=3D"MsoNormal"><b><span style=3D"font-family:"Arial",sans= -serif;color:#0093C9">Stewart Collis</span></b><b><span style=3D"font-size:= 12.0pt;font-family:"Arial",sans-serif;color:#0093C9"><o:p></o:p><= /span></b></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">Chief Technology Officer<o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">aWhere Inc. <o:p> </o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">Office: 1+919.537.8952 Ext.501<o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">Cell: 919.265.9410<o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">Fax:919.240.5443<o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">Email: <u><span style=3D"color:#0563C1"><a href=3D"mailto:stewartcolli= [log in to unmask]"><span style=3D"color:blue">[log in to unmask]</span></a= ></span></u><o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">Connect on <a href=3D"https://www.linkedin.com/in/stewartcollis"> <span style=3D"color:#0563C1">LinkedIn</span></a><o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">3710 University Drive, Suite 300<o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">Durham, NC, 27707<o:p></o:p></span></p> <p class=3D"MsoNormal"><img border=3D"0" width=3D"135" height=3D"50" style= =3D"width:1.4062in;height:.5208in" id=3D"Picture_x0020_1" src=3D"cid:image0= [log in to unmask]" alt=3D"cid:image001.png@01D046E4.80976E40"><o:p><= /o:p></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif"><o:p> </o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-family:"Arial",sans-se= rif">Stay Connected! <o:p></o:p></span></p> <p class=3D"MsoNormal"><span style=3D"font-size:10.0pt;font-family:"Ro= tis Semi Sans Std";color:blue"> </span><a href=3D"https://twitter.com/aWhere"><span style=3D"font-size:10.0= pt;font-family:"Rotis Semi Sans Std";color:blue;text-decoration:n= one"><img border=3D"0" width=3D"15" height=3D"15" style=3D"width:.1562in;he= ight:.1562in" id=3D"Picture_x0020_2" src=3D"cid:[log in to unmask] ED0" 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