The National Institute of Standards and Technology (NIST) Intelligent Control of Mobility Systems (ICMS) Program provides architectures and interface standards, performance test methods and data, and infrastructure technology needed by the U.S. manufacturing industry and government agencies in developing and applying intelligent control technology to mobility systems to reduce cost, improve safety, and save lives. The ICMS Program is made up of several areas including: defense, transportation, and industry projects, among others. Each of these projects provides unique capabilities that foster technology transfer across mobility projects and to outside government, industry and academia for use on a variety of applications. A common theme among these projects is autonomy and the Four Dimensional (3D + time)/Real-time Control System (4D/RCS) standard control architecture for intelligent systems that has been applied to these projects.
This chapter will briefly describe recent project advances within the ICMS Program including: goals, background accomplishments, current capabilities, and technology transfer that has or is planned to occur. Several projects within the ICMS Program have developed the 4D/RCS into a modular architecture for intelligent mobility systems, including: an Army Research Laboratory (ARL) Project currently studying onroad autonomous vehicle control, a Defense Advanced Research Project Agency (DARPA) Learning Applied to Ground Robots (LAGR) Project studying learning within the 4D/RCS architecture with road following application, and an Intelligent Systems Ontology project that develops the description of intelligent vehicle behaviors. Within the standards and performance measurements area of the ICMS program, a Transportation Project is studying components of intelligent mobility systems that are finding their way into commercial crash warning systems (CWS). In addition, the ALFUS (Autonomy Levels For Unmanned Systems) project determines the needs for metrics and standard definitions for autonomy levels of unmanned systems. And a JAUS (Joint Architecture for Unmanned Systems) project is working to set a standard for interoperability between components of unmanned robotic vehicle systems. Testbeds and frameworks underway at NIST include the PRIDE (Prediction in Dynamic Environments) framework to provide probabilistic predictions of a moving object's future position to an autonomous vehicle's planning system, as well as the USARSim/MOAST (Urban Search and Rescue Simulation/Mobility Open Architecture Simulation and Tools) framework that is being developed to provide a comprehensive set of open source tools for the development and evaluation of autonomous agent systems. A NIST Industrial Autonomous Vehicles (IAV) Project provides technology transfer from the defense and transportation projects directly to industry through collaborations with automated guided vehicles manufacturers by researching 4D/RCS control applications to automated guided vehicles inside facilities. These projects are each briefly described in this Chapter followed by Conclusions and continuing work.
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Albus, J. et al. (2008). Intelligent Control of Mobility Systems. In: Prokhorov, D. (eds) Computational Intelligence in Automotive Applications. Studies in Computational Intelligence, vol 132. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-540-79257-4_13
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