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Application of Improved NSGA-II Algorithm in Matching Optimization for Tractor Powertrain

机译:改进的NSGA-II算法在拖拉机动力总成匹配优化中的应用

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To optimize matching of the tractor powertrain and improve the performance of the tractor, a novel matching optimization method for tractor powertrain was proposed based on the improved non-dominated sorting genetic algorithm-11. The normal distribution crossover operator and the differential evolution mutation operator based on the differential evolutionary algorithm were introduced to expand the spatial search range and improve the uniformity of population distribution. Subsequently, the optimization model of transmission ratios was established with constraints such as vehicle speed, ratios of gear ratios, driving adhesion restriction, and so on. In this model, gear ratios were taken as input variables, and the optimization objective was to the lowest drive power loss rate and the lowest specific fuel consumption loss rate. The proposed algorithm was used to optimize the tractor transmission ratios and compared with the original NSGA-II. The experimental results show that after optimized by improved NSGA-II, the drive power loss rate and the specific fuel consumption loss rate of the tractor could be theoretically reduced by 42.62% and 63.80% than before, respectively, which is better than NSGA-II. The overall performance of the tractor has beenimproved obviously which verifies the effectiveness of the improved NSGA-II algorithm.
机译:为了优化拖拉机动力总成和提高拖拉机性能的匹配,基于改进的非主导分类遗传算法-11提出了一种用于拖拉机动力总成的新型匹配优化方法。基于差分进化算法的正态分布交叉操作员和差分演化突变算子被引入扩大空间搜索范围,提高人口分布的均匀性。随后,利用诸如车速,齿轮比率,驾驶粘附限制等的限制建立了透射比的优化模型。在该模型中,将齿轮比作为输入变量作为输入变量,并且优化目标是最低的驱动功率损耗率和最低的特定燃料消耗损失率。该算法用于优化拖拉机透射比并与原始NSGA-II进行比较。实验结果表明,通过改进的NSGA-II进行优化后,拖拉机的驱动功率损耗率和特定燃料消耗损失可能比以前的42.62%和63.80%,这比NSGA-II更好。显然,拖拉机的整体性能显然已经得到了验证了改进的NSGA-II算法的有效性。

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