Ž. Barač, Dorijan Radočaj, I. Plaščak, M. Jurišić, Monika Marković
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引用次数: 0
摘要
本文介绍了对农用拖拉机在各种农用技术表面上行驶时,驾驶员在驾驶室内左右两侧噪音水平的测量和预测可能性的研究,考虑了移动速度和轮胎压力,同时采用了机器学习技术。噪声水平测量是在兰蒂尼 POWERFARM 100 型拖拉机上进行的,符合标准(HRN ISO 5008、HRN ISO 6396 和 HRN ISO 5131)。获得的噪声值被分为两个数据集(左集和右集),并使用多元线性回归(mlr)和三种机器学习方法(梯度提升机(gbm);使用径向基函数核的支持向量机(svmRadial);单调多层感知器神经网络(monmlp))进行处理。从左侧数据集(R2 0.515-0.955);(RMSE 0.302-0.704);(MAE 0.225-0.488)和右侧数据集(R2 0.555-0.955);(RMSE 0.180-0.969);(MAE 0.139-0.644)来看,考虑到曲面,最准确的方法主要是 monmlp,其次是 svmRadial。在分析左右两侧有关表面的全部数据集时,gbm 成为最准确的方法。机器学习方法的应用证明了数据的准确性,但在未来的研究中,可能需要对某些表面进行多次重复测量,以进一步提高准确性。
Prediction of Noise Levels According to Some Exploitation Parameters of an Agricultural Tractor: A Machine Learning Approach
The paper presents research on measuring and the possibility of prediction of noise levels on the left and right sides of the operator within the cabin of an agricultural tractor when moving across various agrotechnical surfaces, considering movement velocity and tire pressures while employing machine learning techniques. Noise level measurements were conducted on a LANDINI POWERFARM 100 type tractor, and aligned with standards (HRN ISO 5008, HRN ISO 6396 and HRN ISO 5131). The obtained noise values were divided into two data sets (left and right set) and processed using multiple linear regression (mlr) and three machine learning methods (gradient boosting machine (gbm); support vector machine using radial basis function kernel (svmRadial); monotone multi-layer perceptron neural network (monmlp)). The most accurate method, considering surfaces, from the left side data set—(R2 0.515–0.955); (RMSE 0.302–0.704); (MAE 0.225–0.488)—and the right side—(R2 0.555–0.955); (RMSE 0.180–0.969); (MAE 0.139–0.644)—was monmlp predominantly, and to a lesser extent svmRadial. On analyzing the total data sets from the left and right sides regarding surfaces, gbm emerged as the most accurate method. The application of machine learning methods demonstrated data accuracy, yet in future research, measurements on certain surfaces may need to be repeated multiple times potentially to improve accuracy further.