首页> 外文期刊>Energy >A comparative trend in forecasting ability of artificial neural networks and regressive support vector machine methodologies for energy dissipation modeling of off-road vehicles
【24h】

A comparative trend in forecasting ability of artificial neural networks and regressive support vector machine methodologies for energy dissipation modeling of off-road vehicles

机译:越野车能量耗散建模的人工神经网络和回归支持向量机方法预测能力的比较趋势

获取原文
获取原文并翻译 | 示例
           

摘要

Machine dynamics and soil elastic-plastic characteristic sort out the soil-wheel interaction productions as very complex problem to be estimated. Energy dissipation due to motion resistance, as the most prominent performance index of towed wheels, is associated with soil properties and tire parameters. The objective of this study was to develop, for the first time, a model for prediction of energy loss in soil working machines using the datasets obtained from soil bin facility and a single-wheel tester. A total of 90 data points were derived from experimentations at five levels of wheel load (1, 2, 3,4, and 5 kN), six tire inflation pressure (50,100,150,200, 250, and 300 kPa) and three forward velocities (0.7,1.4 and 2 m/ s). ANN (Artificial neural network) was used for modeling of obtained results compared to the forecasting ability of SVR (support vector regression) technique. Several statistical criterions, (i.e. MAPE (mean absolute percentage error), MSE (mean square error), MRE (mean relative error) and coefficient of determination (R~2) were incorporated in the investigations. It was observed, on the basis of statistical criterions, that SVR-based generalized model outperformed ANN in modeling energy loss and exhibited its applicability as a promising tool in this domain.
机译:机器动力学和土壤弹塑性特性将土壤轮相互作用的产生分类为一个非常复杂的问题,需要估算。作为牵引车轮最突出的性能指标,由于运动阻力而导致的能量耗散与土壤特性和轮胎参数有关。这项研究的目的是首次使用从土壤仓设施和单轮测试仪获得的数据集,开发一种预测土壤加工机中能量损失的模型。在五个级别的车轮载荷(1、2、3、4和5 kN),六个轮胎充气压力(50,100,150,200、250和300 kPa)和三个向前速度(0.7, 1.4和2 m / s)。与SVR(支持向量回归)技术的预测能力相比,使用ANN(人工神经网络)对获得的结果进行建模。在调查中纳入了几种统计标准,即MAPE(平均绝对百分比误差),MSE(平均平方误差),MRE(平均相对误差)和测定系数(R〜2)。统计标准,即基于SVR的广义模型在能量损失建模方面优于ANN,并显示出其在该领域中很有希望的工具的适用性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号