Deep reinforcement learning driven inspection and maintenance planning under incomplete information and constraints

07/02/2020
by   C. P. Andriotis, et al.
0

Determination of inspection and maintenance policies for minimizing long-term risks and costs in deteriorating engineering environments constitutes a complex optimization problem. Major computational challenges include the (i) curse of dimensionality, due to exponential scaling of state/action set cardinalities with the number of components; (ii) curse of history, related to exponentially growing decision-trees with the number of decision-steps; (iii) presence of state uncertainties, induced by inherent environment stochasticity and variability of inspection/monitoring measurements; (iv) presence of constraints, pertaining to stochastic long-term limitations, due to resource scarcity and other infeasible/undesirable system responses. In this work, these challenges are addressed within a joint framework of constrained Partially Observable Markov Decision Processes (POMDP) and multi-agent Deep Reinforcement Learning (DRL). POMDPs optimally tackle (ii)-(iii), combining stochastic dynamic programming with Bayesian inference principles. Multi-agent DRL addresses (i), through deep function parametrizations and decentralized control assumptions. Challenge (iv) is herein handled through proper state augmentation and Lagrangian relaxation, with emphasis on life-cycle risk-based constraints and budget limitations. The underlying algorithmic steps are provided, and the proposed framework is found to outperform well-established policy baselines and facilitate adept prescription of inspection and intervention actions, in cases where decisions must be made in the most resource- and risk-aware manner.

READ FULL TEXT
research
09/09/2020

Optimal Inspection and Maintenance Planning for Deteriorating Structures through Dynamic Bayesian Networks and Markov Decision Processes

Civil and maritime engineering systems, among others, from bridges to of...
research
11/05/2018

Managing engineering systems with large state and action spaces through deep reinforcement learning

Decision-making for engineering systems can be efficiently formulated as...
research
10/25/2021

Common Information based Approximate State Representations in Multi-Agent Reinforcement Learning

Due to information asymmetry, finding optimal policies for Decentralized...
research
02/27/2023

Exposure-Based Multi-Agent Inspection of a Tumbling Target Using Deep Reinforcement Learning

As space becomes more congested, on orbit inspection is an increasingly ...
research
09/19/2017

Deep Reinforcement Learning for Event-Driven Multi-Agent Decision Processes

The incorporation of macro-actions (temporally extended actions) into mu...
research
05/31/2021

Policies for the Dynamic Traveling Maintainer Problem with Alerts

Companies require modern capital assets such as wind turbines, trains an...

Please sign up or login with your details

Forgot password? Click here to reset