基于LSTM算法的植物工厂生长预测方法

Masahiro Ogawa, T. Kumaki
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引用次数: 0

摘要

近年来,新型农业比重不断提高。植物工厂中的农业一直备受关注。然而,这些类型的农业并不像传统农业那样有利可图。因此,有必要将控制栽培进度作为提高盈利能力的途径之一。本文介绍了植物工厂中植物生长预测的方法。利用微型计算机和传感器测量种植环境数据,采用LSTM算法预测蔬菜的尺寸和重量。从20、50和70次历元的实验结果来看,50次历元的精度最好。MSE为0.077348,MAE为0.187984。测定系数低至- 0.529。MSE和MAE分别为0.165420和0.328250,比size差,决定系数超过−2。从大约的结果来看,大小的预测基本完成。在未来,权重的预测精度需要进一步提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant Growth Prediction Method for Plant Factories Using LSTM Algorithm
In recent years, the ratio of new type agriculture has been increased. Agriculture in plant factories has been attracting attention. However, these types of agriculture are not as profitable as conventional ones. Therefore, it is necessary to control the cultivated schedule as one of the ways to improve the profitability. In this paper, we present the method for plant growth prediction in plant factories. Microcomputers and sensors are used to measure the data of the cultivation environment, and we predict size and weight for vegetable by using LSTM algorithm. From experimental results epochs of 20, 50, and 70, the best accuracy is obtained at epoch number of 50. Then MSE and MAE are 0.077348 and 0.187984, respectively. The coefficient of determination is as low as −0.529. MSE and MAE are 0.165420 and 0.328250, respectively, which were worse than size, and the coefficient of determination exceeded −2. From about results, the prediction of the size is mostly completed. In the future the prediction accuracy of the weight needs to improve.
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