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Safe and Ecological Speed Profile Planning Algorithm for Autonomous Vehicles Using a Parametric Multiobjective Optimization Procedure

机译:参数多目标优化程序的无人驾驶汽车安全生态速度曲线规划算法

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This paper proposes and evaluates an algorithm called Multi-Objective planning based on Simulated Annealing (MOSA) that plans a trajectory (speed profile) for a passenger car on a free, single lane road. This algorithm is relying on a decomposition of the decision space into “chunks” that are optimized separately. Two objectives have been taken into account: travel time and fuel consumption. Optimization constraints are built from safety modelings combining legal speed, curves speed limits and junctions limits. The multi-objective optimization is performed through a linear scalairisation method and the optimization is a parametric optimization based on simulated annealing. The algorithm has been tested on simulated annealing convergence and results show a good convergence under 500 iterations and a small sensitivity to variables initialization. However, sensitivity to core parameters of the simulated annealing (initial temperature and temperature decreasing rate) is very high and some guidelines for the calibration of these parameters are given in this paper. Then, the algorithm has been tested and compared to experimental results and it shows that, even if some drivers can drive the road quicker than the algorithm, they cannot drive with a lower fuel consumption. Furthermore, the algorithm results are better than the most of the experimental results according to the Pareto definition of dominance and global results outperform results from another planning algorithm based on Dijkstra’s algorithm. Future works will concentrate on improving the algorithm to be more reactive to unexpected obstacles and more consistant in the “chunks” transitions.
机译:本文提出并评估了一种基于模拟退火(MOSA)的多目标规划算法,该算法可以规划一条免费,单车道道路上的乘用车的轨迹(速度曲线)。该算法依赖于将决策空间分解为单独优化的“块”。已经考虑了两个目标:行驶时间和燃料消耗。通过将合法速度,曲线速度限制和路口限制相结合的安全模型来建立优化约束。多目标优化是通过线性标尺化方法执行的,该优化是基于模拟退火的参数优化。该算法已经在模拟退火收敛条件下进行了测试,结果表明在500次迭代中收敛效果很好,并且对变量初始化的敏感性较小。但是,对模拟退火的核心参数(初始温度和降温速率)的敏感性非常高,本文给出了校准这些参数的一些准则。然后,对该算法进行了测试并将其与实验结果进行比较,结果表明,即使某些驾驶员可以比算法更快地行驶道路,他们也无法以较低的油耗驾驶。此外,根据Pareto优势的定义,该算法的结果要比大多数实验结果要好,全局结果要优于另一种基于Dijkstra算法的规划算法的结果。未来的工作将集中在改进算法上,以对意外障碍做出更大的反应,并在“块”过渡中更加一致。

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