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首页> 外文期刊>International Journal of Agricultural and Biological Engineering >Application of adaptive neuro-fuzzy inference system to predict draft and energy requirements of a disk plow
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Application of adaptive neuro-fuzzy inference system to predict draft and energy requirements of a disk plow

机译:自适应神经模糊推理系统在磁盘犁中预测选秀和能量要求的应用

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摘要

The energy and draft requirements of a disk plow have been recognized as essential factors when attempting to correctly match it with tractor power. This study examines the possible of using an adaptive neuro-fuzzy inference system (ANFIS) approach and its performance compared to a multiple linear regression (MLR) model to determine the energy and draft requirements of a disk plow. A total of 133 data patterns were obtained by conducting experiments in the field and from the literature. Of these 133 data points, 121 were arbitrarily selected and used for training, and the remaining 12 were used for testing the models. The input variables were plowing depth, plowing speed, soil texture index, initial soil moisture content, initial soil bulk density, disk diameter, disk angle, and disk tilt angle, and output variable was draft of the disk plow. Four membership functions were used with ANFIS: a triangular membership function, generalized bell-shaped membership function, trapezoidal membership function, and Gaussian curve membership function. An evaluation of the outcomes of the ANFIS and MLR modeling shows that the triangular membership function performed better than the other functions. When the ANFIS model draft predictions were compared to the measured values, the average relative error was –1.97%. A comparison of the ANFIS model with other approaches showed that the energy and draft requirements of the disk plow could be estimated with satisfactory accuracy.
机译:当试图用拖拉机电源正确匹配时,磁盘犁的能量和磁盘拖发要求被认为是基本因素。本研究检查了使用自适应神经模糊推理系统(ANFIS)方法及其性能与多元线性回归(MLR)模型相比,以确定磁盘犁的能量和牵引要求。通过在现场和文献中进行实验,获得了总共133个数据模式。在这133个数据点中,任意选择121个并用于培训,其余12用于测试模型。输入变量耕作深度,犁速,土壤纹理指数,初始土壤湿度含量,初始土壤堆积密度,圆盘直径,磁盘角和磁盘倾斜角,输出变量是磁盘犁的牵伸。四个隶属函数与ANFIS一起使用:三角形员工功能,广义钟形隶属函数,梯形隶属函数和高斯曲线隶属函数。对ANFI和MLR建模结果的评估表明,三角形隶属函数比其他功能更好。当ANFI模型预测的讨论量与测量值进行比较时,平均相对误差为-1.97%。与其他方法的ANFI模型的比较表明,磁盘犁的能量和草稿要求可以以满意的精度估算。

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