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Energy
AGETS MBR An Application of Model-Based Reasoning to Gas Turbine Diagnostics
Winston, Howard A., Clark, Robert T., Buchina, Gene
A common difficulty in diagnosing failures within Pratt & Whitney's F100-PW-100/200 gas turbine engine occurs when a fault in one part of a system -- comprising an engine, an airframe, a test cell, and automated ground engine test set (AGETS) equipment -- is manifested as an out-of-bound parameter elsewhere in the system. In such cases, the normal procedure is to run AGETS self-diagnostics on the abnormal parameter. However, because the self-diagnostics only test the specified local parameter, it will pass, leaving only the operators' experience and traditional fault-isolation manuals to locate the source of the problem in another part of the system. This article describes a diagnostic tool (that is, AGETS MBR), designed to overcome this problem by isolating failures using an overall system troubleshooting approach. AGETS MBR was developed jointly by personnel at Pratt & Whitney and United Technologies Research Center using an AI tool called the qualitative reasoning system (QRS).
Adaptive Load Balancing: A Study in Multi-Agent Learning
Schaerf, A., Shoham, Y., Tennenholtz, M.
We study the process of multi-agent reinforcement learning in the context ofload balancing in a distributed system, without use of either centralcoordination or explicit communication. We first define a precise frameworkin which to study adaptive load balancing, important features of which are itsstochastic nature and the purely local information available to individualagents. Given this framework, we show illuminating results on the interplaybetween basic adaptive behavior parameters and their effect on systemefficiency. We then investigate the properties of adaptive load balancing inheterogeneous populations, and address the issue of exploration vs.exploitation in that context. Finally, we show that naive use ofcommunication may not improve, and might even harm system efficiency.
Applied AI News
Hughes Missile Systems (Tucson, Lear Astronics (Santa Monica and to "enter" the surgical area, as if they Ariz.) is providing intelligent character Ontario, Calif.) is combining neural were actually there. Cross/Blue Shield (New York, N.Y.) to enhance its Autonomous Landing FuziWare (Knoxville, Tenn.), a developer expedite the processing of medical Guidance (ALG) system. Empire will install the is using a neural network-based tools for business and engineering ICRs at its Yorktown Heights and massively parallel coprocessor for solutions, has received a patent from Manhattan offices, where they will be real-time image processing in the the U.S. Department of Commerce ALG system, which enables commercial Patent and Trademark Office for its used to process about 10,000 documents and military aircraft pilots to FuziCalc product, a fuzzy spreadsheet per day. The claims in the patent cover various fuzzy number The Boston Museum of Fine Arts Researchers at Georgia Tech (Atlanta, interface elements as well as the (Boston, Mass.) has developed a virtual Ga.) have created intelligent agent entire fuzzy number processing system. TOAK navigates and surgical equipment, has implemented through multiple networks and a virtual reality application a complex 3D model derived from across diverse computer systems to for technical design presentation.
Bayesian Backpropagation Over I-O Functions Rather Than Weights
The conventional Bayesian justification of backprop is that it finds the MAP weight vector. As this paper shows, to find the MAP io function instead one must add a correction tenn to backprop. That tenn biases one towards io functions with small description lengths, and in particular favors (some kinds of) feature-selection, pruning, and weight-sharing.
Bayesian Backpropagation Over I-O Functions Rather Than Weights
The conventional Bayesian justification of backprop is that it finds the MAP weight vector. As this paper shows, to find the MAP io function instead one must add a correction tenn to backprop. That tenn biases one towards io functions with small description lengths, and in particular favors (some kinds of) feature-selection, pruning, and weight-sharing.
Fast Non-Linear Dimension Reduction
Kambhatla, Nanda, Leen, Todd K.
We propose a new distance measure which is optimal for the task of local PCA. Our results with speech and image data indicate that the nonlinear techniques provide more accurate encodings than PCA. Our local linear algorithm produces more accurate encodings (except for one simulation with image data), and trains much faster than five layer auto-associative networks. Acknowledgments This work was supported by grants from the Air Force Office of Scientific Research (F49620-93-1-0253) and Electric Power Research Institute (RP8015-2). The authors are grateful to Gary Cottrell and David DeMers for providing their image database and clarifying their experimental results. We also thank our colleagues in the Center for Spoken Language Understanding at OGI for providing speech data.
Bayesian Backpropagation Over I-O Functions Rather Than Weights
The conventional Bayesian justification of backprop is that it finds the MAP weight vector. As this paper shows, to find the MAP io function instead one must add a correction tenn to backprop. That tenn biases one towards io functions with small description lengths, and in particular favors (somekinds of) feature-selection, pruning, and weight-sharing.
Backpropagation Convergence Via Deterministic Nonmonotone Perturbed Minimization
Mangasarian, O. L., Solodov, M. V.
The fundamental backpropagation (BP) algorithm for training artificial neuralnetworks is cast as a deterministic nonmonotone perturbed gradientmethod. Under certain natural assumptions, such as the series of learning rates diverging while the series of their squares converging, it is established that every accumulation point of the online BP iterates is a stationary point of the BP error function. Theresults presented cover serial and parallel online BP, modified BP with a momentum term, and BP with weight decay. 1 INTRODUCTION
Applied AI News
Chevron Canada is decentralizing its computer environment from mainframes to PCs e Emission Reduction Research mounted infantry virtual environment) and Sun workstations. The DIVE belt provides the Chevron oil exploration crews will be N.J.) has developed the Batch Design ability to operate inside a virtual environment able to retrieve various types of well Kit, an expert system for optimizing without becoming tangled batch processes and minimizing pollution. Funded by the U.S. The system will help eliminate Army, the DIVE project is designed to ADVANTA Mortgage (San Diego, avoidable pollution and save pharmaceutical allow soldiers to operate within a virtual Cal.) has signed a license agreement and chemical manufacturers battlefield. VR is being used to demonstrate used as the focal point of exhibition fire engineering principles such The Santa Fe Institute (Santa Fe, stands designed by Photosound for as means of escape theory, fire modeling, N.M.) has won an ARPA grant of such pharmaceutical firms as Smith-human behavior, and spatial $323,000 for research on complex Kline Beecham. The system will be designed advanced computin arena.
Knowledge-Based Systems Research and Applications in Japan, 1992
Feigenbaum, Edward A., Friedland, Peter E., Johnson, Bruce B., Nii, H. Penny, Schorr, Herbert, Shrobe, Howard, Engelmore, Robert S.
This article summarizes the findings of a 1992 study of knowledge-based systems research and applications in Japan. Representatives of universities and businesses were chosen by the Japan Technology Evaluation Center to investigate the state of the technology in Japan relative to the United States. The panel's report focused on applications, tools, and research and development in universities and industry and on major national projects.