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Market-based risk allocation for multi-agent systems

Published: 10 May 2010 Publication History

Abstract

This paper proposes Market-based Iterative Risk Allocation (MIRA), a new market-based decentralized optimization algorithm for multi-agent systems under stochastic uncertainty, with a focus on problems with continuous action and state space. In large coordination problems, from power grid management to multi-vehicle missions, multiple agents act collectively in order to maximize the performance of the system, while satisfying mission constraints. These optimal action plans are particularly susceptible to risk when uncertainty is introduced. We present a decentralized optimization algorithm that minimizes the system cost while ensuring that the probability of violating mission constraints is below a user-specifie upper bound.
We build upon the paradigm of risk allocation [3], in which the planner optimizes not only the sequence of actions, but also its allocation of risk among state constraints. We extend the concept of risk allocation to multi-agent systems by highlighting risk as a resource that is traded in a computational market. The equilibrium price of risk that balances the supply and demand is found by an iterative price adjustment process called t tonnement (also known as Walrasian auction). Our work is distinct from the classical tâtonnement approach in that we use Brent's method to provide fast guaranteed convergence to the equilibrium price. The simulation results demonstrate the efficien y and optimality of the proposed decentralized optimization algorithm.

References

[1]
K. E. Atkinson. An Introduction to Numerical Analysis, Second Edition. John Wiley & Sons, 1989.
[2]
J. C. Jacobo, D. De Roure, and E. H. Gerding. An agent-based electrical power market. In Proceedings of AAMAS-08: Demo Papers, 2008.
[3]
M. Ono and B. C. Williams. An efficien motion planning algorithm for stochastic dynamic systems with constraints on probability of failure. In Proceedings of AAAI-08, 2008.
[4]
M. Ono and B. C. Williams. Iterative risk allocation: A new approach to robust model predictive control with a joint chance constraint. In Proceedings of 47th IEEE Conference on Decision and Control (CDC-08), 2008.
[5]
M. Ono and B. C. Williams. Risk allocation for multi-agent systems using tâtonnement. Technical report, MIT Computer Science and Artificia Intelligence Laboratory, 2009.
[6]
J. Tuinstra. Price Dynamics in Equilibrium Models: The Search for Equilibrium and the Emergence of Endogenous Fluctuations. Kluwer Academic Publishers, 2000.
[7]
H. Voos. Agent-based distributed resource allocation in technical dynamic systems. In Proceedings of IEEE Workshop on Distributed Intelligent Systems: Collective Intelligence and Its Applications (DIS 2006), 2006.

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Published In

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AAMAS '10: Proceedings of the 9th International Conference on Autonomous Agents and Multiagent Systems: volume 1 - Volume 1
May 2010
1578 pages
ISBN:9780982657119

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  • IFAAMAS

In-Cooperation

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International Foundation for Autonomous Agents and Multiagent Systems

Richland, SC

Publication History

Published: 10 May 2010

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Author Tags

  1. Tâtonnement
  2. Walrasian auction
  3. chance constrained optimal planning
  4. continuous resource allocation
  5. decentralized optimization

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  • Research-article

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AAMAS '10
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Overall Acceptance Rate 1,155 of 5,036 submissions, 23%

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