一种带交通仿真约束的优化问题搜索加速方法

A search acceleration method for optimization problems with transport simulation constraints

Transportation Research, Series B: Methodological · 2017
被引 9
ABS 4

中文导读

提出一种加速方法,在优化问题中避免对每个候选决策变量都运行交通仿真至收敛,从而快速逼近最优解,适用于多种优化算法和仿真器,并通过道路定价问题验证了效率。

Abstract

• New method to accelerate the approximate solution of optimization problems with transport simulation constraints. • Applicable to real-valued, discrete, binary decision variables. • Compatible with broad class of optimization algorithms and search heuristics. • Compatible with broad range of iterated transport simulators (e.g. stochastic/deterministic, macroscopic/microscopic). • Minimal parametrization, self-tuning capabilities. • Efficiency demonstration with a non-trivial road pricing problem. This work contributes to the rapid approximation of solutions to optimization problems that are constrained by iteratively solved transport simulations. Given an objective function, a set of candidate decision variables and a black-box transport simulation that is solved by iteratively attaining a (deterministic or stochastic) equilibrium, the proposed method approximates the best decision variable out of the candidate set without having to run the transport simulation to convergence for every single candidate decision variable. This method can be inserted into a broad class of optimization algorithms or search heuristics that implement the following logic: (i) Create variations of a given, currently best decision variable, (ii) identify one out of these variations as the new currently best decision variable, and (iii) iterate steps (i) and (ii) until no further improvement can be attained. A probabilistic and an asymptotic performance bound are established and exploited in the formulation of an efficient heuristic that is tailored towards tight computational budgets. The efficiency of the method is substantiated through a comprehensive simulation study with a non-trivial road pricing problem. The method is compatible with a broad range of simulators and requires minimal parametrization.

交通仿真数学优化启发式算法计算效率