AdaPool: A Diurnal-Adaptive Fleet Management Framework using Model-Free Deep Reinforcement Learning and Change Point Detection
Marina Haliem, Vaneet Aggarwal, Bharat Bhargava

TL;DR
This paper presents AdaPool, an adaptive fleet management framework that uses model-free deep reinforcement learning and change point detection to recognize and adapt to diurnal patterns in ride-sharing environments, improving efficiency.
Contribution
The paper introduces a novel combination of online change point detection with deep Q networks to adapt fleet management policies to dynamic, diurnal patterns in real-time ride-sharing scenarios.
Findings
Improved fleet utilization up to 90% of demand
Reduced idle times and maximized profits
Effective adaptation to diurnal environmental changes
Abstract
This paper introduces an adaptive model-free deep reinforcement approach that can recognize and adapt to the diurnal patterns in the ride-sharing environment with car-pooling. Deep Reinforcement Learning (RL) suffers from catastrophic forgetting due to being agnostic to the timescale of changes in the distribution of experiences. Although RL algorithms are guaranteed to converge to optimal policies in Markov decision processes (MDPs), this only holds in the presence of static environments. However, this assumption is very restrictive. In many real-world problems like ride-sharing, traffic control, etc., we are dealing with highly dynamic environments, where RL methods yield only sub-optimal decisions. To mitigate this problem in highly dynamic environments, we (1) adopt an online Dirichlet change point detection (ODCP) algorithm to detect the changes in the distribution of experiences,…
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