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首页> 外文期刊>Agronomy Journal >A Method to Predict Weekly Strawberry Fruit Yields from Extended Season Production Systems
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A Method to Predict Weekly Strawberry Fruit Yields from Extended Season Production Systems

机译:一种从延长季节生产系统预测草莓每周果实产量的方法

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In major strawberry (Fragaria x ananassa) production areas, fruit are harvested continuously for 4 to 6 mo. During the season, weekly yields vary. To improve weekly forecasts, a yield prediction equation was developed for 'Strawberry Festival' using input variables derived from flower counts and temperature data over two seasons in Florida. Weekly yields are dependent on the number, size, and quality of ripe fruit. Variation in the mean fruit number per plant for a 1-wk interval was explained by the equation 1.502 x adjFC + 0.375 x adjFC x (TFDP - TFDP-Harvest week) with good accuracy (rcent2=0.93), where adjFC = the mean number of flowers per plant counted during a prior 1-wk interval determined from temperature data and (TFDP - TFDP-Harvest week) is a measure of the temperature trend during the harvest week. The size of fruit and percentage of fruit culled due to poor quality could be predicted from flower count trends, but correlations between actual and predicted values were low (radj2=0.48 for fruit weight and radj2=0.18 for fruit culled due to size and shape). No input variables were identified to predict disease or damage. The final yield equation, mean yield (g plant-1) = 19.624 x adjFC + 5.343 x adjFC x (TFDP - TFDP-Harvest week), included only the input variables used to predict fruit number. The coefficient of determination (rcent2) for a regression of actual yields on yields estimated using this equation was 0.89. Based on historic temperatures, an expected value for (TFDP - TFDP-Harvest week) and flower counts from an expected flowering interval were also determined for 1-wk harvests. The coefficient of determination was 0.84 for yield estimates based on these values.
机译:在主要的草莓(Fragaria x ananassa)产区,连续收获果实4到6个月。在本季节中,每周的产量会有所不同。为了改善每周预报,使用从佛罗里达州两个季节的花数和温度数据得出的输入变量,为“草莓节”开发了产量预测方程。每周产量取决于成熟果实的数量,大小和质量。方程1.502 x adjFC + 0.375 x adjFC x(TFDP-TFDP收获周)的精度很高(rcent2 = 0.93),其中adjFC =平均数根据温度数据确定的在先前的1周间隔内计算的每棵植物的花朵数量,(TFDP-TFDP收获周)是收获周期间温度趋势的度量。可以从花数趋势中预测水果的大小和因质量差而被剔除的水果的百分比,但实际值与预测值之间的相关性较低(由于尺寸和形状而被剔除的水果重量为radj2 = 0.48,水果剔除的radj2 = 0.18) 。没有确定输入变量来预测疾病或损害。最终产量方程式为平均产量(g plant-1)= 19.624 x adjFC + 5.343 x adjFC x(TFDP-TFDP收获周),仅包括用于预测果实数量的输入变量。使用此公式估算的实际产量与产量的回归系数(rcent2)为0.89。根据历史温度,还确定了1周收获的预期值(TFDP-TFDP收获周)和预期开花间隔的花朵计数。基于这些值的产量估计的确定系数为0.84。

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