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Artificial intelligence approach to estimate discharge of drip tape irrigation based on temperature and pressure

机译:基于温度和压力的滴灌胶带灌溉的人工智能方法

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摘要

One of the effective factors to ensure the desirable operation of drip irrigation systems is the uniform emitter discharge, which is affected by operating pressure and temperature. Accurate estimation of this parameter is crucial for optimal irrigation system management and operation. In this research, the emitter outflow discharge was simulated through artificial intelligence (AI)-based approaches under a wide range of temperature (13-53 degrees C) and operating pressures (0-240 kPa) variations. The applied AI models included artificial neural networks (ANN), neuro-fuzzy sub-clustering (NF-SC), neuro-fuzzy c-Means clustering (NF-FCM), and least square support vector machine (LS-SVM). The input parameters matrix consisted of operating pressure, water temperature, discharge coefficient, pressure exponent and nominal discharge, while the ratio of measured discharge to nominal discharge (modified coefficient, M) was the output of the models. The applied models were assessed through the robust k-fold testing data scanning mode. The 5-agent Global Performance Indicator (GPI) was used for the final reliable ranking. The results showed that all the applied AI models with an average mean absolute error (MAE) of 8.8% had acceptable accuracy for estimating the modified M coefficient. According to the GPI, the LS-SVM model had the lowest error, followed by the NF-SC model with a slight difference.
机译:确保滴灌系统所需操作的有效因素之一是均匀的发射极放电,其受到操作压力和温度的影响。对该参数的准确估计对于最佳灌溉系统管理和操作至关重要。在本研究中,通过在宽范围(13-53摄氏度)和操作压力(0-240kPa)变化的过程中,通过人工智能(AI)模拟发射器流出放电。所应用的AI模型包括人工神经网络(ANN),神经模糊子聚类(NF-SC),神经模糊C型聚类(NF-FCM)和最小二乘支持向量机(LS-SVM)。输入参数矩阵由操作压力,水温,放电系数,压力指数和标称放电组成,而测量放电与标称放电(修饰系数,M)的比率是模型的输出。通过稳健的K折叠测试数据扫描模式评估所应用的模型。 5代理全球性能指标(GPI)用于最终可靠的排名。结果表明,具有8.8%的平均平均误差(MAE)的所有应用AI模型具有可接受的精度,用于估计修改的M系数。根据GPI,LS-SVM模型具有最低的误差,其次是NF-SC模型具有轻微的差异。

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