Combining Simulation with Heuristics to solve Stochastic Routing and Scheduling Problems Kombination von Simulation mit Heuristiken als Lösungsansatz für Stochastic Routing und Scheduling
نویسنده
چکیده
Many real-world problems in the production and logistics business are NPhard even in their deterministic representation, and actually also show stochastic behaviour, where even the mathematical description of the – frequently empirical – distributions is difficult or even impossible. Therefore, an approach is acquired that enables the search for valid and reasonably good solutions under representation of the stochastic system behaviour. A suitable approach is to combine heuristic optimization with simulation techniques. This paper discusses how Monte-Carlo simulation can be combined with heuristics and meta-heuristics in order to efficiently solve such stochastic combinatorial optimization problems. The application is illustrated with examples in two different fields, including logistics and transportation – e.g. vehicle routing problems and inventory problems – as well as manufacturing and production – e.g. scheduling problems.
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