000 05372cam a22003014a 4500
003 CUTN
005 20171130151139.0
008 000707s2001 flua b 001 0 eng
020 _a0849304563
020 _a9780849304569
082 0 0 _a006.330
_221
_bHOP
100 1 _aHopgood, Adrian A.
245 1 0 _aIntelligent systems for engineers and scientists /
_cAdrian A. Hopgood.
250 _a2nd ed.
260 _aBoca Raton, Fla. :
_bCRC Press,
_cc2001.
300 _a467 p. :
_bill. ;
_c25 cm.
500 _aThis updated version of the best-selling Knowledge-Based Systems for Engineers and Scientists (CRC Press, 1993) embraces both the explicit knowledge-based models retained from the first edition and the implicit numerical models represented by neural networks and optimization algorithms. The title change to "Intelligent Systems for Engineers and Scientists" reflects its broader scope, incorporating knowledge-based systems, computational intelligence, and their hybrids.Clear and concise, the book shows the issues encountered in the development of applied systems and describes a wide range of intelligent systems techniques. The author describes each technique at the level of detail required to develop intelligent systems for real applications. Whether you are building intelligent systems or you simply want to know more about them, "Intelligent Systems for Engineers and Scientists" provides you with a detailed, up-to-date, and practical guide to solving real problems in science and engineering. This indispensable book provides everything in one volume: breadth - from knowledge-based systems to computational intelligence, depth - from introductory concepts to advanced specialist techniques, and scope - from principles to practicalities
505 _aINTRODUCTION Intelligent Systems Knowledge-Based Systems The Knowledge Base Deduction, Abduction, and Induction The Inference Engine Declarative and Procedural Programming Expert Systems Knowledge Acquisition Search Computational Intelligence Integration with other Software RULE-BASED SYSTEMS Rules and Facts A Rule-Based System for Boiler Control Rule Examination and Rule Firing Maintaining Consistency The Closed-World Assumption Use of Variables within Rules Forward-Chaining Conflict Resolution Backward-Chaining A Hybrid Strategy Explanation Facilities DEALING WITH UNCERTAINTY Sources of Uncertainty Bayesian Updating Certainty Theory Fuzzy Logic Other Techniques OBJECT-ORIENTED SYSTEMS Objects and Frames An Illustrative Example Introducing OOP Data Abstraction Inheritance Encapsulation Unified Modeling Language (UML) Dynamic (or late) Binding Message Passing and Function Calls Type Checking Further Aspects of OOP Frame-Based Systems INTELLIGENT AGENTS Characteristics of an Intelligent Agent Agents and Objects Agent Architectures Multiagent Systems SYMBOLIC LEARNING Introduction Learning by Induction Case-Based Reasoning OPTIMIZATION ALGORITHMS Optimization The Search Space Searching the Search Space Hill-Climbing and Gradient Descent Algorithms Simulated Annealing Genetic Algorithms NEURAL NETWORKS Introduction Neural Network Applications Nodes and Interconnections Single and Multilayer Perceptrons The Hopfield Network MAXNET The Hamming Network Adaptive Resonance Theory (ART) Networks Kohonen Self-Organizing Networks Radial Basis Function Networks HYBRID SYSTEMS Convergence of Techniques Blackboard Systems Genetic-Fuzzy Systems Neuro-Fuzzy Systems Genetic Neural Systems Clarifying and Verifying Neural Networks Learning Classifier Systems TOOLS AND LANGUAGES A Range of Intelligent Systems Tools Expert System Shells Toolkits and Libraries Artificial Intelligence Languages Lisp Prolog Comparison of AI Languages SYSTEMS FOR INTERPRETATION AND DIAGNOSIS Introduction Deduction and Abduction for Diagnosis Depth of Knowledge Model-Based Reasoning Case Study: A Blackboard System for Interpreting Ultrasonic Images SYSTEMS FOR DESIGN AND SELECTION The Design Process Design as a Search Problem Computer Aided Design The Product Design Specification (PDS) Conceptual Design Constraint Propagation and Truth Maintenance Case Study: The Design of a Lightweight Beam Design as a Selection Exercise Failure Mode and Effects Analysis (FMEA) SYSTEMS FOR PLANNING Introduction Classical Planning Systems STRIPS Considering the Side Effects of Actions Hierarchical Planning Postponement of Commitment Job-Shop Scheduling Constraint-Based Analysis Replanning and Reactive Planning SYSTEMS FOR CONTROL Introduction Low-Level Control Requirements of High-Level (Supervisory) Control Blackboard Maintenance Time-Constrained Reasoning Fuzzy Control The BOXES Controller Neural Network Controllers Statistical Process Control (SPC) CONCLUDING REMARKS Benefits Information Trends INDEX
650 0 _aExpert systems (Computer science)
650 0 _aComputer-aided engineering.
650 0 _aOptimization algorithms
650 0 _aHybrid systems
942 _2ddc
_cBOOKS
504 _aIncludes bibliographical references and index.
856 4 2 _3Publisher description
_uhttp://www.loc.gov/catdir/enhancements/fy0646/00010341-d.html
906 _a7
_bcbc
_corignew
_d1
_eecip
_f20
_gy-gencatlg
999 _c24112
_d24112