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Published in Computers & Operations Research, 2023
This paper proposes a novel model for multi-objective energy-efficient hybrid flow shop. Time-of-use electricity prices, power down strategy, and uniform parallel machines are considered. To solve the model, we propose a Q-learning and general variable neighborhood search (GVNS) driven non-dominated sorting genetic algorithm II (QVNS-NSGA-II). The novelty of the algorithm is that we incorporate Q-learning into GVNS to guide premium adaptive operator selection throughout the shaking and local search processes.
Recommended citation: Li, Peize, et al. "Multi-objective energy-efficient hybrid flow shop scheduling using Q-learning and GVNS driven NSGA-II." Computers & Operations Research 159 (2023): 106360.
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Under Review in Transportation Science, 2025
This research aims to address the battery inventory management problem with uncertain demand that arises in an EV battery swapping-charging network. In this problem, decision-makers determine initial battery stocks and periodic network operations, including battery replenishment, fulfillment, and lateral transshipment. To tackle the curse of dimensionality and distributional ambiguity, we propose a utility-based Service Level Measure (SLM) and incorporate this measure to derive a target-oriented Robust Satisficing (RS) model. A rigorous mathematical proof is provided for the salient properties of the SLM and RS models. This work pioneers the examination of multi-stage robust decisions under novel RS framework.
Working Paper, 2025
This research proposes a data-driven RS model to address a multi-period, joint vehicle pricing and repositioning problem for shared micromobility. Specifically, historical data and side information are leveraged to predict uncertain demand with a linear prediction model. Based on the estimated distribution, a residual-based RS model addresses distributional ambiguity of random residuals, and an estimation-fortified RS model is developed to control prediction error at the expense of target loss.
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Undergraduate course, University 1, Department, 2014
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Workshop, University 1, Department, 2015
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