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Home / Proceedings / Proceedings of the International Conference on Automated Planning and Scheduling, 30 / Book One

Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models

February 1, 2023

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Authors

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey

Heriot-Watt University,Royal Holloway, University of London,University of Huddersfield,University of Huddersfield


DOI:

10.1609/icaps.v30i1.6742


Abstract:

The creation and maintenance of a domain model is a well recognised bottleneck in the use of automated planning; indeed, ensuring a planning engine is fed with an accurate model of an application is essential in order that generated plans are effective. Engineering domain models using a hybrid representation is particularly challenging as it requires accurately describing continuous processes, which can have complex numeric effects. In this work we consider the problem of the refinement of an engineered hybrid domain model, to more accurately capture the effect of the underlying processes. Our approach exploits the information content of the original model, utilising machine learning techniques to identify important situation and temporal features that indicate a variation in the original effect. We use the problem of modelling traffic flows in an Urban Traffic Management setting as a case study and demonstrate in our evaluation that the refined domain models provide more accurate simulation, which can lead to higher quality plans. The contribution of this work is a general approach to the automated refinement of hybrid planning domain models that reduces the knowledge engineering effort in producing a detailed process model. The approach can be used for refining the domain model during the initial stages of development, or for re-configuring the domain model when used in the same problem area but with a different scenario. We test out the approach within a real world case study.

Topics: ICAPS

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HOW TO CITE:

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models Proceedings of the International Conference on Automated Planning and Scheduling, 30 (2020) 469-477.

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models ICAPS 2020, 469-477.

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey (2020). Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models. Proceedings of the International Conference on Automated Planning and Scheduling, 30, 469-477.

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey. Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models. Proceedings of the International Conference on Automated Planning and Scheduling, 30 2020 p.469-477.

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey. 2020. Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models. "Proceedings of the International Conference on Automated Planning and Scheduling, 30". 469-477.

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey. (2020) "Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models", Proceedings of the International Conference on Automated Planning and Scheduling, 30, p.469-477

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey, "Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models", ICAPS, p.469-477, 2020.

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey. "Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models". Proceedings of the International Conference on Automated Planning and Scheduling, 30, 2020, p.469-477.

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey. "Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models". Proceedings of the International Conference on Automated Planning and Scheduling, 30, (2020): 469-477.

Alan Lindsay,Santiago Franco,Rubiya Reba,Thomas L. McCluskey. Refining Process Descriptions from Execution Data in Hybrid Planning Domain Models. ICAPS[Internet]. 2020[cited 2023]; 469-477.


ISSN: 2334-0843


Published by AAAI Press, Palo Alto, California USA
Copyright 2022, Association for the Advancement of
Artificial Intelligence 1900 Embarcadero Road, Suite
101, Palo Alto, California 94303 All Rights Reserved

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