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首页> 外文期刊>Computers and Electronics in Agriculture >A framework for predicting soft-fruit yields and phenology using embedded, networked microsensors, coupled weather models and machine-learning techniques
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A framework for predicting soft-fruit yields and phenology using embedded, networked microsensors, coupled weather models and machine-learning techniques

机译:使用嵌入式网络的微传感器,耦合天气模型和机器学习技术预测软果产量和诸如

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Improving the accuracy of harvest timing predictions offers an opportunity to sustainably improve soft fruit fanning. Fruits are perishable, high-value and seasonal, and prices are typically time-sensitive. Harvesting is labour-intensive and increasingly expensive making accurate phenological predictions valuable for growers. We have developed and tested a novel framework for linking mesoscale weather forecasts to local crop microclimates using embedded autonomous sensors to produce bespoke phonological predictions, using strawberries as the model crop. Seedlings were planted in polytunnels, and environmental and yield data were collected throughout the growing season. Over 1.2 million datapoints were collected by networked microsensors which measured spatial and temporal variability in air temperature, relative humidity (RH), soil moisture and photosynthetically active radiation (PAR) irradiance. Fleeces were added to a subset of the plants to generate additional within-polytunnel variation. Trigonometric models transformed weather station data, which showed a relatively low agreement with polytunnel air temperature (R-2 = 0.6) and RH (R-2 = 0.5), into more accurate polytunnel-specific predictions for temperature and RH (both R-2 = 0.8). Cumulative fruit yields followed logistic growth curves and the coefficients of these curves were dependent on micro-climatic conditions. After 10,000 iterations, machine learning adequately optimised the coefficients of these curves, including RH and air temperature into the fitted equation. Dataloggers measuring environmental data in-situ could infer model parameters using iterative training for novel fruit cultivars growing in different locations without a-priori phenological information. Reliance on manually measured yield data is a current limitation but if high-throughput technologies emerge then this process could be entirely automated. We have demonstrated that this framework can be used to predict fruit timing. Predictions could be refined and updated as frequently as new data becomes available, which in this case would be every eight minutes. This approach represents a step-forward in developing bespoke phenological predictions to inform grower decisions.
机译:提高收获时序预测的准确性为可持续提高软果制造的机会提供了机会。水果是易腐的,高价值和季节性的,价格通常是时敏。收获是劳动密集型且越来越昂贵的准确验证预测对种植者有价值的。我们开发并测试了使用嵌入式自治传感器将Mescrevere天气预报连接到当地作物微跨度的新框架,以产生定制语音预测,使用草莓作为模型作物。幼苗种植在多牙线上,环境和产量数据在整个生长季节中收集。通过网络微传感器收集超过120万个DataPoints,其测量空气温度,相对湿度(RH),土壤水分和光合作用辐射(PAR)辐照度的空间和时间变异性。将羊毛添加到植物的子集中以产生额外的多滴漏变化。三角模型变换了气象站数据,其显示与多阵风空气温度(R-2 = 0.6)和RH(R-2 = 0.5)的相对低的协议,进入温度和RH的更精确的多滴电线特异性预测(r-2 = 0.8)。累积果实产量跟随逻辑生长曲线,这些曲线的系数依赖于微气体条件。 10,000次迭代后,机器学习充分优化了这些曲线的系数,包括RH和空气温度进入装配方程。测量环境数据原位的数据转换器可以使用迭代培训来推断模型参数,以便在没有先验的实验信息的不同位置生长的新型水果品种。依赖手动测量的产量数据是电流限制,但如果高吞吐量技术出现,则该过程可以完全自动化。我们已经证明,该框架可用于预测水果时机。由于新数据可用,可以频繁地精制和更新预测,在这种情况下,这是每八分钟。这种方法代表了开发定制鉴定的象智预测以通知种植者决策的前进。

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