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Coordinating Agile Systems through the Model-based Execution of Temporal Plans

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dc.contributor.advisor Brian Williams
dc.contributor.author Leaute, Thomas
dc.contributor.other Model-based Embedded and Robotic Systems
dc.date.accessioned 2006-04-28T18:22:21Z
dc.date.available 2006-04-28T18:22:21Z
dc.date.issued 2006-04-28
dc.identifier.other MIT-CSAIL-TR-2006-029
dc.identifier.uri http://hdl.handle.net/1721.1/32537
dc.description SM thesis
dc.description.abstract Agile autonomous systems are emerging, such as unmanned aerial vehicles (UAVs), that must robustly perform tightly coordinated time-critical missions; for example, military surveillance or search-and-rescue scenarios. In the space domain, execution of temporally flexible plans has provided an enabler for achieving the desired coordination and robustness, in the context of space probes and planetary rovers, modeled as discrete systems. We address the challenge of extending plan execution to systems with continuous dynamics, such as air vehicles and robot manipulators, and that are controlled indirectly through the setting of continuous state variables.Systems with continuous dynamics are more challenging than discrete systems, because they require continuous, low-level control, and cannot be controlled by issuing simple sequences of discrete commands. Hence, manually controlling these systems (or plants) at a low level can become very costly, in terms of the number of human operators necessary to operate the plant. For example, in the case of a fleet of UAVs performing a search-and-rescue scenario, the traditional approach to controlling the UAVs involves providing series of close waypoints for each aircraft, which incurs a high workload for the human operators, when the fleet consists of a large number of vehicles.Our solution is a novel, model-based executive, called Sulu, that takes as input a qualitative state plan, specifying the desired evolution of the state of the system. This approach elevates the interaction between the human operator and the plant, to a more abstract level where the operator is able to “coach” the plant by qualitatively specifying the tasks, or activities, the plant must perform. These activities are described in a qualitative manner, because they specify regions in the plant’s state space in which the plant must be at a certain point in time. Time constraints are also described qualitatively, in the form of flexible temporal constraints between activities in the state plan. The design of low-level control inputs in order to meet this abstract goal specification is then delegated to the autonomous controller, hence decreasing the workload per human operator. This approach also provides robustness to the executive, by giving it room to adapt to disturbances and unforeseen events, while satisfying the qualitative constraints on the plant state, specified in the qualitative state plan.Sulu reasons on a model of the plant in order to dynamically generate near-optimal control sequences to fulfill the qualitative state plan. To achieve optimality and safety, Sulu plans into the future, framing the problem as a disjunctive linear programming problem. To achieve robustness to disturbances and maintain tractability, planning is folded within a receding horizon, continuous planning and execution framework. The key to performance is a problem reduction method based on constraint pruning. We benchmark performance using multi-UAV firefighting scenarios on a real-time, hardware-in-the-loop testbed.
dc.description.provenance Made available in DSpace on 2006-04-28T18:22:21Z (GMT). No. of bitstreams: 2 MIT-CSAIL-TR-2006-029.ps: 41524644 bytes, checksum: b1888dae12ecb940c2c69cdd8d51bc4e (MD5) MIT-CSAIL-TR-2006-029.pdf: 17696521 bytes, checksum: ced3be03ce4fb61d2e39f5f8de568097 (MD5) en
dc.format.extent 155 p.
dc.format.extent 41524644 bytes
dc.format.extent 17696521 bytes
dc.format.mimetype application/postscript
dc.format.mimetype application/pdf
dc.language.iso en_US
dc.relation.ispartofseries Massachusetts Institute of Technology Computer Science and Artificial Intelligence Laboratory
dc.subject Model-based Programming
dc.subject Qualitative Reasoning
dc.subject Temporal Reasoning
dc.subject Continuous Scheduling
dc.subject Path Planning
dc.subject Model Predictive Control
dc.title Coordinating Agile Systems through the Model-based Execution of Temporal Plans

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