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Appraisal of Takagi–sugeno type neuro-fuzzy network system with a modified differential evolution method to predict nonlinear wheel dynamics caused by road irregularities

机译:用改进的差分进化方法对高木-杉野型神经模糊网络系统进行评估,以预测道路不平顺引起的非线性车轮动力学

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Wheel dynamics play a substantial role in traversing and controlling the vehicle, braking, ride comfort, steering, and maneuvering. The transient wheel dynamics are difficult to be ascertained in tire–obstacle contact condition. To this end, a single-wheel testing rig was utilized in a soil bin facility for provision of a controlled experimental medium. Differently manufactured obstacles (triangular and Gaussian shaped geometries) were employed at different obstacle heights, wheel loads, tire slippages and forward speeds to measure the forces induced at vertical and horizontal directions at tire–obstacle contact interface. A new Takagi–Sugeno type neuro-fuzzy network system with a modified Differential Evolution (DE) method was used to model wheel dynamics caused by road irregularities. DE is a robust optimization technique for complex and stochastic algorithms with ever expanding applications in real-world problems. It was revealed that the new proposed model can be served as a functional alternative to classical modeling tools for the prediction of nonlinear wheel dynamics.
机译:车轮动力学在行驶和控制车辆,制动,乘坐舒适性,转向和操纵方面起着重要作用。在轮胎与障碍物的接触条件下,很难确定瞬态车轮动力学特性。为此,在土壤箱设施中使用了单轮试验台,以提供受控的实验介质。在不同的障碍物高度,车轮负载,轮胎打滑和前进速度下,采用了不同制造的障碍物(三角形和高斯形状的几何形状),以测量在轮胎-障碍物接触界面的垂直和水平方向上产生的力。一种新的Takagi–Sugeno型神经模糊网络系统,具有改进的差分进化(DE)方法,用于对道路不平整引起的车轮动力学建模。对于复杂和随机算法,DE是一种健壮的优化技术,在现实世界中的应用不断扩展。结果表明,新提出的模型可以作为经典建模工具的功能替代品,用于预测非线性车轮动力学。

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