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Application of Binary Tree Multi-class Classification Algorithm Based on SVM in Shift Decision for Engineering Vehicle

机译:基于SVM的二叉树多级分类算法在工程车辆换档决策中的应用

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Support Vector Machines (SVM) based on structural risk minimisation principle demonstrates the better learning ability for decision-making. Since the normal SVM is deduced from two classifications, it faced difficulty in solving the multi-class classifications like the shift decision of the engineering vehicle. Here we present shift decision algorithm which is based on SVM-biliary tree multi-class classification. It distributes classifier to every node for constructing the multi-class SVM. Experiments show that the method can optimize the gear shift position according to operation states, consequently, meet the needs of the automatic shift transmission accurately and on time. It is an effective way to realize the intelligence shift decision for engineering vehicle.
机译:基于结构风险最小化原则的支持向量机(SVM)展示了决策的更好学习能力。由于从两个分类推导出正常的SVM,因此它面临难以解决工程车辆的转移决策等多级分类。在这里,我们呈现基于SVM-Biliary Tree多级分类的换档决策算法。它将分类器分发给每个节点以构建多级SVM。实验表明,该方法可以根据操作状态优化换档位置,因此,准确和按时满足自动换档传输的需要。它是实现工程车辆智能转变决策的有效方法。

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