Neural Approximate Dynamic Programming for the Ultra-fast Order Dispatching Problem
Arash Dehghan, Mucahit Cevik, Merve Bodur

TL;DR
This paper introduces a neural approximate dynamic programming approach to optimize ultra-fast order dispatching in same-day delivery, improving efficiency through realistic extensions and outperforming baseline methods.
Contribution
It presents the first application of NeurADP outside ride-pool matching, incorporating order batching and courier queues for realistic ultra-fast dispatching optimization.
Findings
NeurADP outperforms myopic and DRL baselines.
Order batching and courier queues improve delivery efficiency.
NeurADP is robust across various operational scenarios.
Abstract
Same-Day Delivery (SDD) services aim to maximize the fulfillment of online orders while minimizing delivery delays but are beset by operational uncertainties such as those in order volumes and courier planning. Our work aims to enhance the operational efficiency of SDD by focusing on the ultra-fast Order Dispatching Problem (ODP), which involves matching and dispatching orders to couriers within a centralized warehouse setting, and completing the delivery within a strict timeline (e.g., within minutes). We introduce important extensions to ultra-fast ODP such as order batching and explicit courier assignments to provide a more realistic representation of dispatching operations and improve delivery efficiency. As a solution method, we primarily focus on NeurADP, a methodology that combines Approximate Dynamic Programming (ADP) and Deep Reinforcement Learning (DRL), and our work…
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Taxonomy
TopicsTransportation and Mobility Innovations · Traffic control and management · Elevator Systems and Control
MethodsFocus
