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Application of Soft Computing Techniques for the Analysis of Tractive Properties of a Low-Power Agricultural Tractor under Various Soil Conditions

机译:软计算技术在各种土壤条件下对低功率农业拖拉机牵引特性分析的应用

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摘要

Considering the fuel consumption and soil compaction, optimization of the performance of tractors is crucial for modern agricultural practices. The tractive performance is influenced by many factors, making it difficult to be modeled. In this work, the traction force and tractive efficiency of a low-power tractor, as affected by soil coefficient, vertical load, horizontal deformation, soil compaction, and soil moisture, were studied. The optimal work of a tractor is a compromise between the maximum traction force and the maximum tractive efficiency. Optimizing these factors is complex and requires accurate models. To this end, the performances of soft computing approaches, including neural networks, genetic algorithms, and adaptive network fuzzy inference system, were evaluated. The optimal performance was realized by neural networks trained by backpropagation as well as backpropagation combined with a genetic algorithm, with a coefficient of determination of 0.955 for the traction force and 0.954 for the tractive efficiency. Based on models with the best accuracy, a sensitivity analysis was performed. The results showed that the traction performance is mainly influenced by the soil type; nevertheless, the vertical load and soil moisture also exhibited a relatively strong influence.
机译:考虑到燃油消耗和土壤压实,优化拖拉机的性能对于现代农业实践至关重要。牵引性能受到许多因素的影响,使得难以建模。在这项工作中,研究了低功率拖拉机的牵引力和牵引效率,受土壤系数,垂直载荷,水平变形,土壤压实和土壤水分的影响。拖拉机的最佳工作是在最大牵引力和最大牵引效率之间的折衷。优化这些因素很复杂,需要准确的模型。为此,评估软计算方法的性能,包括神经网络,遗传算法和自适应网络模糊推理系统。通过背部衰老训练的神经网络以及与遗传算法结合的反向验证的最佳性能,具有0.955的牵引力的系数和0.954的牵引效率。基于具有最佳精度的模型,进行了灵敏度分析。结果表明,牵引性能主要受土壤型的影响;然而,垂直载荷和土壤水分也表现出相对强烈的影响。

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