Fuzzy Expert Systems And Fuzzy Reasoning pdf | Free Download | In this book, we will explore the emulation of human thought, capable of dealing with uncertainties, ambiguities, and contradictions.We agree with Anderson (1993) that much human thought can be expressed in rules (Anderson, 1993). To handle uncertainties, ambiguities, and contradictions, we will use fuzzy systems techniques, implemented by a fuzzy expert system. We supply the fuzzy expert system language FLOPS with this book, so that the readers can actually use our supplied example programs and write their own programs. An overwhelmingly important fact about human reasoning is that it is not a static process. Data are gathered; some preliminary hypotheses are advanced and tested; some of these may be rejected, and new hypotheses advanced; more data may be required, until finally some conclusion is reached. A computer program to emulate reasoning must proceed similarly. Unfortunately, in much mathematical description of the thought process the dynamic nature is lost. We cannot afford to make this error. Expert systems are computer programs, designed to make available some of the skills of an expert to nonexperts. Since such programs attempt to emulate in some way an expert’s thinking patterns, it is natural that the first work here was done in Artificial Intelligence (AI) circles. Among the first expert systems were the 1965 Dendral programs (Feigenbaum and Buchanan, 1993), which determined molecular structure from mass spectrometer data; R1 (McDermott, 1980) used to configure computer systems; and MYCIN (Shortliffe, 1976) for medical diagnosis. Since the middle 1960s there have been many expert systems created for fields ranging from space shuttle operations through intensive-care-unit patient alarm systems to financial decision making.