Fuzzy Logic-Based Control of Manufacturing Processes
Enormous advances in technology have made everyday life much easier. New developments within control systems have allowed for greater empowerment for individual devices, which often takes the burden off of the user. Among the many new technologies based on artificial intelligence, Fuzzy Logic Control System is the most popular and most applicable system. Almost in all domains, Fuzzy logic has a broad application area. It is safe to say that we can replace all control-based systems by Fuzzy Logic Control System. FCLS can be used in a great variety of commercial and industrial applications, showing its strength and prominence as a new technology prompt for future innovation.
Fuzzy Logic is a principle within artificial intelligence that is based primarily off the notion of logical reasoning that humans use daily in the context of the normal everyday lives. There are a number of instances where the value of stimulus and external information cannot compute to directly absolute true or false connotations. Rather, there is a middle ground that is ambiguous in nature. This ambiguity can also be seen as the fuzzy area, where individuals have to use intuitive decisions and critical thinking to apply commonsense notions to situations that do not prompt absolute notions of true or false [8]. Working within the fuzzy area helps empower individuals to make decisions and act in certain ways without having to require the absolute nature of a true or false decision. This type of reasoning can be translated into artificial intelligence, which would thus empower machine systems to make the same commonsense decisions within situations that are not in absolute sure false connotations. This is a human rationalization that has traditionally been left out of automated machine processing. Yet, in today's advances in technology, "fuzzy control theory is designed to replicate human reasoning, thinking and response mechanisms" in a way that can greater empower artificial intelligence to think more freely like a human [5].
Thus, fuzzy logic essentially allows control systems to work within that gray ambiguous area without breaking down or proving incapable of moving forward. When control software uses fuzzy logic principles, it operates at a much more fluid and flexible design. According to Dewy, it is able to make decisions on a number of flexible "if-then rules" [3]. When this situation occurs that has no absolute true or false value, the control software is not stuck in indecision. Fuzzy logic programming allows the system to make decisions within the ambiguous gray area. In the figure below, the gray shaded area are all the values that are absolutely true "beyond a shadow of a doubt," while the crosshatched area represents values that are absolutely false [3]. If all values are either absolutely true or absolute false, the system does not need the increased critical thinking capabilities present within fuzzy logic [1]. Yet, this is not always the case. In the middle, is ambiguous region that is neither absolutely true nor false. Fuzzy logic comes into play when there are values that rest within this ambiguous region. In most application processes, there are some values of data that lie within the common area, between true and false. As Dewy suggests, "information which lies within the common area has to be studied, stored, and used to quantify and to classify the data," which "allows for smart manipulation of the data structure in order to make inference to a solution" [3]. Essentially, fuzzy logic allows control systems to make educated decisions for data that falls within this common area, as based on its capability to study and quantify such data on more complicated categorical structures. Ultimately, this allows control systems to make smarter decisions without the constant need for interruption by a human controller [8]. There may be no need if it is an easy control system which means if it works well with PID control system. But for more complicated control systems, Fuzzy Logic Control System can be the best way to use.
Additionally, fuzzy logic systems can help streamline control system processes. In many situations, the input signal into a control system can be quite complex, or "noisy" [8]. There is simply too much information streaming into the control process, which ultimately clogs up its ability to input incoming data. Unfortunately, this noise "tends to corrupt the integrity of the actual signal," and can cause serious problems in processing incoming data [2]. Fuzzy logic control systems can help quiet some of that noise. In such a system, fuzzy logic empowers the control system to use common sense capabilities to funnel out noisy data that is not needed in the actual input. The system can...
Artificial Intelligence What is AI? Future of AI The Expert System What is an Expert System? Three Major Components of an Expert System Structure of an Expert System Neural network Fuzzy Logic Chaos Engineering Field and Benefit Debate on Comparison Artificial Intelligence (AI) and the Expert System Defined Consulting applies a knowledge-based system to commercial loan officers using multimedia (Hedburg 121). Their system requires a fast IBM desktop computer. Other systems may require even more horsepower by using exotic computers or workstations. The
50). Therefore, the ability of planners in both civilian and military aviation settings will need to ensure this integrated approach to information management to identify opportunities for improvement and what steps will be needed today to ensure their successful outcome in the future. Conclusion The research showed that resource management and strategic decision making processes in the civilian and military sectors of the aviation industry have been profoundly affected by innovations
Although the research tools provided by the ISO 14001 framework are both qualitative and quantitative, this approach is consistent with the guidance provided by Neuman (2003) who points out that, "Both qualitative and quantitative research use several specific research techniques (e.g., survey, interview, and historical analysis), yet there is much overlap between the type of data and the style of research. Most qualitative-style researchers examine qualitative data and vice
" (Worden and Barton, 2003) Assessment is a method that provides an estimate of the extent of the damage and prediction is the method that offers information concerning the structural safety and that provides estimation of the residual life. It is reported that many modern approaches to damage identification are "based on the idea of pattern recognition (PR)." (Worden and Barton, 2003) A PR algorithm is stated to be one that
Some manufacturers have sought to improve their profitability by becoming more horizontally integrated in their supply chain management operations, but it does not appear feasible for the company to acquire the vendors that supply its component parts so viable alternatives must be identified that can facilitate the supply chain management process vertically. As Choy, Lee and Lo (2003) point out, "Very few manufactures now own all the activities along the
Aviation Maintenance Management Theory & Practices Aeronautics is considered to be the most secured and fastest mode of journey. But the frequent air accidents and resulting consequences reduce our reliance on the mode. Human flaws are acknowledged to be very critical in diverse fields like medicine, mining, shipping so also aviation. Irrespective of the fact that the role human component is widely acknowledged in the cockpit, its contribution in sphere of
Our semester plans gives you unlimited, unrestricted access to our entire library of resources —writing tools, guides, example essays, tutorials, class notes, and more.
Get Started Now