Designing a Decision Making Support Information System for the Operational Control of Industrial Technological Processes (original) (raw)
Related papers
mation System for the Operational Control of In- dustrial Technological Processes
2016
Abstract—Fuzzy logic is a new and innovative technolo-gy that was used in order to develop a realization of engi-neering control. In recent years, fuzzy logic proved its great potential especially applied to automatization of industrial process control, where it enables the control design to be formed based on experience of experts and results of experiments. The projects that have been real-ized reveal that the application of fuzzy logic in the tech-nological process control has already provided us with better decisions compared to that of standard control technique. Fuzzy logic provides an opportunity to design an advisory system for decision-making based on opera-tor experience and results of experiments not taking a mathematical model as a basis. The present work deals with a specific technological process ─ designing a sup-port decision making information system for the opera-tional control of the lime kiln with the use of fuzzy logic based on creation of the relevant expert-ob...
A Fuzzy Logic Control application to the Cement Industry
IFAC-PapersOnLine, 2018
A case study on continuous process control based on fuzzy logic and supported by expert knowledge is proposed. The aim is to control the coal-grinding operations in a cement manufacturing plant. Fuzzy logic is based on linguistic variables that emulate human judgment and can solve complex modeling problems subject to uncertainty or incomplete information. Fuzzy controllers can handle control problems when an accurate model of the process is unavailable, ill-defined, or subject to excessive parameter variations. The system implementation resulted in productivity gains and energy consumption reductions of 3% and 5% respectively, in line with the literature related to similar applications.
A Review on Application of Fuzzy Logic in Increasing the Efficiency of Industrial Process
2012
Soft computing is tolerant of imprecision, uncertainty, partial truth, and approximation. By using soft computing we try to incorporate intelligence in the system. The basic ideas underlying soft computing in its current form is influenced by Zadeh's 1965 paper on fuzzy sets. Systems based on soft computing are becoming increasingly popular in industrial automation. The successful applications of soft computing suggest that the impact of soft computing will be felt increasingly in coming years. Soft computing is likely to play an especially important role in science and engineering, but eventually its influence may extend much farther. In this research paper authors studied conventional techniques of automation and various applications of fuzzy logic in industrial processes.
Advanced industrial control using fuzzy logic of tunnel kiln brick production
Proceedings of the 16th IFAC World Congress, 2005, 2005
A case study of two-level and set point-oriented controls in complex industrial heating plants has been carried out. Task-oriented controls occur at command and supervision level in conjunction with human process operator, while set-point controls occur at regulation level of energy conversion and heating process. Fuzzy logic control is involved on the second control level on the basis of products quality control. The control system has been implemented in factory for clay-brick productions "KIK" in Kumanovo. A suitable and intelligent automation can save energy and therefore costs.
Improving of Engineering System Based on Fuzzy Logic Control In Industrial Applications
2018
The Engineering System (Engsys) depends on many factors such as: inputs, outputs, and automation. This work contributes the linguistic control for industrial applications. Also, this paper is the development of a linguistic approach for designing Fuzzy Controller "FC" for Engsys. The constant gains for different points not sufficient to satisfy the performance for Engsys manipulator. Therefore, the knowledge-based FC is proposed ether to meet the operating conditions or to remove any fixed mode. The FC uses the error and the change of error as fuzzy linguistic inputs to satisfy the system performance. The proposed programs are developed to simulate the performance of the Indsys. The new controller uses only the available information of the input-output for controlling the position and velocity of the ES axes of the motion of the end effectors.
Modern Fuzzy Control Systems and Its Applications, 2017
The processing company under study found out that the boiler was the key machine and needs artificial intelligence monitoring and control. It was simulated under Matlab software and oil level, and pressure and temperature were to be modelled and controlled using the programmable logic controller (PLC) with a fuzzy logic controller as the main brain of control. The company is for processing of fruits to produce juice.
Decision Support System Based on Fuzzy Knowledge Applied to a Software Factory
2009
Development environments to DSS are evolving to open and distribute architectures. The main features of these new architectures are: Data Base Query Tools in clients, fast developments and better graphics interfaces. DSS developers need a set of functionalities as multidimensional data view, variable capacity DW, set of complex criteria in order to filter the required information access, quick queries, minimum reorganisation when the data model is modified, etc. In this work a fuzzy knowledge based system to make decisions inside a DSS system that supports the planning and production control in a software factory. The fuzzy system is developed to evaluate the appropriateness of different platforms to construct a software product. From the platform specifications given in the product definition, the fuzzy system calculates the appropriateness of each existing platform to develop the product.
APPLICATIONS OF FUZZY LOGIC: A LITERATURE REVIEW
Journal of Fundamental & Comparative Research, 2023
Fuzzy logic is tolerant of imprecision, uncertainty, partial truth, and approximation. The basic ideas underlying soft computing in its current form is influenced by Zadeh's 1965 paper on fuzzy sets. Systems based on fuzzy logic are becoming popular in industry, business, defence. Medical, and many more. The successful applications of fuzzy logic suggest that the impact of fuzzy logic will increase in coming years. Fuzzy logic is likely to play an important role in science and engineering, but its influence may extend much farther. Fuzzy logic has provided to be an excellent choice for the many control system application. In the present competitive scenario the fuzzy logic system are being adopted for the improvement of the quality and reduction of development time and the cost of a product. Fuzzy logic has proven to be an excellent choice for many control system applications. In this research paper authors studied various applications of fuzzy logic in industrial processes and in various segments.
Intelligent Control System of a Real Industrial Process
The Eurasia Proceedings of Science Technology Engineering and Mathematics
Industrial systems are difficult to control and supervise efficiently because of the complexity of the production process. The aim is to automatically control in real-time as an alternative for operators as possible and highlight the importance of machine learning in the field of industry. Integrating SVM into the industrial supervision system in the cement factory (SCIMAT) permits the classification of different measurements coming from sensors to the Programmable Logic Controller (PLC) that indicates when the process is in good functioning or bad indicating that a default has occurred. These measurements are classified after training in three classes of level (low, medium, and high) that are classified in their turn into two classes (good and bad functioning). The three classes present the inputs of the fuzzy controllers. Based on this classification, the PLC makes orders for industrial equipment. Then a regression of variation of measurements in real-time is carried out to predic...