I. Introduction
Multi-Agent Path Finding (MAPF) computes a set of collision-free paths for multiple agents connecting their respective start and goal locations while optimizing a scalar measure of paths. Variants of MAPF have been widely studied in the robotics community over the last few years [33]. In this article, we investigate a natural generalization of the MAPF to include multiple objectives for multiple agents and hence the name Multi-Objective Multi-Agent Path Finding (MOMAPF). In MOMAPF, agents have to trade-off multiple objectives such as completion time, travel risk and other domain-specific measures. MOMAPF is a generalization of MAPF, and is therefore NP-Hard [41].