Field 12 Location: West Side Research and Extension Center ( Fresno County ) Row spacing = 40 inches

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1 Field 12 Loction: West Side Reserch nd Extension Center ( Fresno County ) Row spcing = 40 inches DP 348 RF DPL / Monsnto DP 358 RF DPL / Monsnto MON 16R 330 R2P Monsnto MON 16R 341 R2P Monsnto OA EXP Monsnto / Olvey & Assoc PHY 841 RF Phytogen PHY 881 RF Phytogen PHY 888 RF Phytogen HA 1432 Hzer HA 690 Hzer PHY 805 RF Phytogen PHY 802 RF Phytogen MEAN LSD LSD 0.10 %CV c P * NOTE: LINT YIELD VALUES shown were clculted using mini-gin. This simple ginning method differs from UCCE methods in prior yers (mini-gin does not hve commercil gin style cleners. Corrections were clculted for moisture loss/gin between field hrvest weight timing nd ginning timing, nd bsic gin loss estimtes re typiclly lower with use of mini-gin. All smples were hndled in n identicl mnner in terms of mini-gin opertions, so gin turnout nd lint percent numbers represent reltive vriety differences. LSD = lest significnt difference t 5% level (differences in men vlues shown tht differ by more thn LSD vlue shown re significntly different) b C.V. = coefficient of vrition cross replictions c P = probbility (if vlue shown is 0.05 or less, there is greter thn 95% probbility of significnt differences between men vlues shown)

2 2016 University of Cliforni PIMA COTTON VARIETY TRIALS Dec. 21, 2016 updte MINI-GIN versus SHAFTER RESEARCH GIN COMPARISON from prior yers from prior yers ( s shown, not 2017) for informtion purposes - comprison, since 2017 tril dt ll bsed on mini-gin processing Loction: Los Bnos re (Merced County) HARVEST DATE: 10/ for comprison: SEED MINI-GIN MINI-GIN GIN TURNOUTS PERCENT from COTTON LINT PERCENT GIN TURNOUT 2015 COTTON TRIALS (**2015 nlyses done using Shfter Reserch Gin) VARIETY SEED COMPANY (lbs/cre) (%) (%) Corcorn Los Bnos Riverdle Shfter PHY 805RF Phytogen PX 8188RF Phytogen PHY 841RF Phytogen PHY 881RF Phytogen DP 348RF Monsnto / Delt Pine DP 358RF Monsnto / Delt Pine DP/OA-EXP. 38 Monsnto / Olvey & Assoc DP/OA-EXP. 48 Monsnto / Olvey & Assoc MEAN * if vlues not shown, not in 2015 trils ** Shfter Reserch Gin is smller scle, commercil type gin with lint cleners The lint yields shown on the SUMMARY PAGE for this site were determined using the mini-gin turnout % dt, which tends to be significntly higher thn more stndrd type of gin (such s the "Shfter Reserch Gin" which incorportes lint cleners tril gin turnouts determined using the "Shfter Reserch Gin" re provided for informtion only. Since they were determined using different fields in different yer, there is no expecttion tht the sme gin turnouts would pply for 2016 field sites.

3 Loction: Buttonwillow re ( Kern County ) HARVEST DATE: 10 / 26 Row spcing = 38 inches DP 348 RF DPL / Monsnto DP 358 RF DPL / Monsnto MON 16R 330 R2P Monsnto MON 16R 341 R2P Monsnto OA EXP Monsnto / Olvey & Assoc PHY 841RF Phytogen PHY 881 RF Phytogen PHY 888 RF Phytogen HA 1432 HA 690 Hzer Hzer MEAN LSD LSD 0.10 %CV c P * NOTE: LINT YIELD VALUES shown were clculted using mini-gin. This simple ginning method differs from UCCE methods in prior yers (mini-gin does not hve commercil gin style cleners. Corrections were clculted for moisture loss/gin between field hrvest weight timing nd ginning timing, nd bsic gin loss estimtes re typiclly lower with use of mini-gin. All smples were hndled in n identicl mnner in terms of mini-gin opertions, so gin turnout nd lint percent numbers represent reltive vriety differences. LSD = lest significnt difference t 5% level (differences in men vlues shown tht differ by more thn LSD vlue shown re significntly different) b C.V. = coefficient of vrition cross replictions c P = probbility (if vlue shown is 0.05 or less, there is greter thn 95% probbility of significnt differences between men vlues shown)

4 Loction: Corcorn re ( Kings County ) HARVEST DATE: 11 / 01 DP 348 RF DPL / Monsnto DP 358 RF DPL / Monsnto MON 16R 330 R2P Monsnto MON 16R 341 R2P Monsnto OA EXP Monsnto / Olvey & Assoc PHY 841RF Phytogen PHY 881 RF Phytogen PHY 888 RF Phytogen HA 1432 HA 690 Hzer Hzer MEAN LSD 0.05 NS NS NS NS LSD 0.10 %CV c P * NOTE: LINT YIELD VALUES shown were clculted using mini-gin. This simple ginning method differs from UCCE methods in prior yers (mini-gin does not hve commercil gin style cleners. Corrections were clculted for moisture loss/gin between field hrvest weight timing nd ginning timing, nd bsic gin loss estimtes re typiclly lower with use of mini-gin. All smples were hndled in n identicl mnner in terms of mini-gin opertions, so gin turnout nd lint percent numbers represent reltive vriety differences. LSD = lest significnt difference t 5% level (differences in men vlues shown tht differ by more thn LSD vlue shown re significntly different) b C.V. = coefficient of vrition cross replictions c P = probbility (if vlue shown is 0.05 or less, there is greter thn 95% probbility of significnt differences between men vlues shown)

5 Loction: Riverdle re (Fresno County) HARVEST DATE: 11 / 07 DP 348 RF DPL / Monsnto DP 358 RF DPL / Monsnto MON 16R 330 R2P Monsnto MON 16R 341 R2P Monsnto OA EXP Monsnto / Olvey & Assoc PHY 841RF Phytogen PHY 881 RF Phytogen PHY 888 RF Phytogen HA 1432 HA 690 Hzer Hzer MEAN LSD 0.05 NS LSD b %CV c P * NOTE: LINT YIELD VALUES shown were clculted using mini-gin. This simple ginning method differs from UCCE methods in prior yers (mini-gin does not hve commercil gin style cleners. Corrections were clculted for moisture loss/gin between field hrvest weight timing nd ginning timing, nd bsic gin loss estimtes re typiclly lower with use of mini-gin. All smples were hndled in n identicl mnner in terms of mini-gin opertions, so gin turnout nd lint percent numbers represent reltive vriety differences. LSD = lest significnt difference t 5% level (differences in men vlues shown tht differ by more thn LSD vlue shown re significntly different) b C.V. = coefficient of vrition cross replictions c P = probbility (if vlue shown is 0.05 or less, there is greter thn 95% probbility of significnt differences between men vlues shown)

6 Loction: Los Bnos re (Merced County) HARVEST DATE: 10 / 30 DP 348 RF DPL / Monsnto DP 358 RF DPL / Monsnto MON 16R 330 R2P Monsnto MON 16R 341 R2P Monsnto OA EXP Monsnto / Olvey & Assoc PHY 841RF Phytogen PHY 881 RF Phytogen PHY 888 RF Phytogen HA 1432 Hzer HA 690 Hzer MEAN LSD b %CV c P * NOTE: LINT YIELD VALUES shown were clculted using mini-gin. This simple ginning method differs from UCCE methods in prior yers (mini-gin does not hve commercil gin style cleners. Corrections were clculted for moisture loss/gin between field hrvest weight timing nd ginning timing, nd bsic gin loss estimtes re typiclly lower with use of mini-gin. All smples were hndled in n identicl mnner in terms of mini-gin opertions, so gin turnout nd lint percent numbers represent reltive vriety differences. LSD = lest significnt difference t 5% level (differences in men vlues shown tht differ by more thn LSD vlue shown re significntly different) b C.V. = coefficient of vrition cross replictions c P = probbility (if vlue shown is 0.05 or less, there is greter thn 95% probbility of significnt differences between men vlues shown)

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