Hybrid Grid Partition and Rought Set Method for Fuzzy Rule Generation in Production Planning Problem Approach
DOI:
https://doi.org/10.35335/emod.v14i3.36Keywords:
Hybrid approach, Grid partition, Rough set theory, Fuzzy rule generation, Production planningAbstract
This research introduces a hybrid grid partition and rough set method for fuzzy rule generation in the production planning problem. The approach combines fuzzy logic, rough set theory, and grid partitioning techniques to address the complexity and uncertainty inherent in production planning decisions. By integrating these techniques, the approach captures the relationships between input variables and production planning decisions, allowing for informed decision-making in dynamic manufacturing environments. The research demonstrates the generation of high-quality fuzzy rules based on membership functions, grid partitioning, and attribute reduction. A numerical example is provided to illustrate the application of the approach, showcasing its potential in improving decision-making accuracy in production planning. However, the research acknowledges limitations such as the simplified scenario, assumption of variable independence, and scalability concerns. Further research is necessary to address these limitations and validate the approach in more realistic and complex production planning scenarios. Overall, the hybrid grid partition and rough set method for fuzzy rule generation offer a promising approach to enhance decision support systems in production planning and contribute to the advancement of manufacturing and supply chain management.
References
Bamford, D. R., & Forrester, P. L. (2003). Managing planned and emergent change within an operations management environment. International journal of operations & production management, 23(5), 546-564.
Baryannis, G., Validi, S., Dani, S., & Antoniou, G. (2019). Supply chain risk management and artificial intelligence: state of the art and future research directions. International Journal of Production Research, 57(7), 2179-2202.
Boullé, M. (2011). Data grid models for preparation and modeling in supervised learning. Hands-On Pattern Recognition: Challenges in Machine Learning, 1, 99-130.
Chan, A. P., Chan, D. W., & Yeung, J. F. (2009). Overview of the application of “fuzzy techniques” in construction management research. Journal of construction engineering and management, 135(11), 1241-1252.
Cheng, C. H., Chen, T. L., & Wei, L. Y. (2010). A hybrid model based on rough sets theory and genetic algorithms for stock price forecasting. Information Sciences, 180(9), 1610-1629.
Cheng, L., & Yu, T. (2018). Dissolved gas analysis principle-based intelligent approaches to fault diagnosis and decision making for large oil-immersed power transformers: A survey. Energies, 11(4), 913.
Cheng, Y., Chen, K., Sun, H., Zhang, Y., & Tao, F. (2018). Data and knowledge mining with big data towards smart production. Journal of Industrial Information Integration, 9, 1-13.
Elmahmudi, A., & Ugail, H. (2019). Deep face recognition using imperfect facial data. Future Generation Computer Systems, 99, 213-225.
Emmett, S. (2005). Excellence in warehouse management: how to minimise costs and maximise value. John Wiley & Sons.
Ertay, T., Ruan, D., & Tuzkaya, U. R. (2006). Integrating data envelopment analysis and analytic hierarchy for the facility layout design in manufacturing systems. Information sciences, 176(3), 237-262.
Guide Jr, V. D. R. (2000). Production planning and control for remanufacturing: industry practice and research needs. Journal of operations Management, 18(4), 467-483.
Harjunkoski, I., Maravelias, C. T., Bongers, P., Castro, P. M., Engell, S., Grossmann, I. E., ... & Wassick, J. (2014). Scope for industrial applications of production scheduling models and solution methods. Computers & Chemical Engineering, 62, 161-193.
Jacobs, F. R., Chase, R. B., & Lummus, R. R. (2014). Operations and supply chain management (pp. 533-535). New York, NY: McGraw-Hill/Irwin.
Jahromi, M. Z., & Taheri, M. (2008). A proposed method for learning rule weights in fuzzy rule-based classification systems. Fuzzy sets and Systems, 159(4), 449-459.
Jensen, R., & Shen, Q. (2008). Computational intelligence and feature selection: rough and fuzzy approaches.
Jensen, R., & Shen, Q. (2008). Computational intelligence and feature selection: rough and fuzzy approaches.
Junior, F. R. L., Osiro, L., & Carpinetti, L. C. R. (2013). A fuzzy inference and categorization approach for supplier selection using compensatory and non-compensatory decision rules. Applied Soft Computing, 13(10), 4133-4147.
Klimke, W. A. (2006). Uncertainty modeling using fuzzy arithmetic and sparse grids. Shaker.
Lang, G., Miao, D., & Cai, M. (2017). Three-way decision approaches to conflict analysis using decision-theoretic rough set theory. Information Sciences, 406, 185-207.
Lee, A. H., Kang, H. Y., Yang, C. Y., & Lin, C. Y. (2010). An evaluation framework for product planning using FANP, QFD and multi-choice goal programming. International journal of production research, 48(13), 3977-3997.
Lee, H. L., & Billington, C. (1992). Managing supply chain inventory: pitfalls and opportunities. MIT Sloan Management Review.
Li, Y. L., Tang, J. F., Chin, K. S., Han, Y., & Luo, X. G. (2012). A rough set approach for estimating correlation measures in quality function deployment. Information Sciences, 189, 126-142.
Loh, T. C., & Koh*, S. C. L. (2004). Critical elements for a successful enterprise resource planning implementation in small-and medium-sized enterprises. International journal of production research, 42(17), 3433-3455.
Lootsma, F. A. (2013). Fuzzy logic for planning and decision making (Vol. 8). Springer Science & Business Media.
Lummus, R. R., & Vokurka, R. J. (1999). Defining supply chain management: a historical perspective and practical guidelines. Industrial management & data systems.
Melo, M. T., Nickel, S., & Saldanha-Da-Gama, F. (2009). Facility location and supply chain management–A review. European journal of operational research, 196(2), 401-412.
Mula, J., Poler, R., García-Sabater, J. P., & Lario, F. C. (2006). Models for production planning under uncertainty: A review. International journal of production economics, 103(1), 271-285.
Neumann, K., Schwindt, C., & Trautmann, N. (2002). Advanced production scheduling for batch plants in process industries. OR spectrum, 24, 251-279.
Noori, R., Abdoli, M. A., Farokhnia, A., & Abbasi, M. (2009). RETRACTED: Results uncertainty of solid waste generation forecasting by hybrid of wavelet transform-ANFIS and wavelet transform-neural network.
Okwu, M. O., & Nwachukwu, A. N. (2019). A review of fuzzy logic applications in petroleum exploration, production and distribution operations. Journal of Petroleum Exploration and Production Technology, 9, 1555-1568.
Papadakis, V. M., Lioukas, S., & Chambers, D. (1998). Strategic decision‐making processes: the role of management and context. Strategic management journal, 19(2), 115-147.
Parmar, D., Wu, T., & Blackhurst, J. (2007). MMR: an algorithm for clustering categorical data using rough set theory. Data & Knowledge Engineering, 63(3), 879-893.
Petry, F., & Elmore, P. (2015). Geospatial uncertainty representation: Fuzzy and rough set approaches. Fifty years of fuzzy logic and its applications, 483-497.
Ramírez-Gallego, S., García, S., Benítez, J. M., & Herrera, F. (2015). Multivariate discretization based on evolutionary cut points selection for classification. IEEE transactions on cybernetics, 46(3), 595-608.
Rao, K., & Tilt, C. (2016). Board composition and corporate social responsibility: The role of diversity, gender, strategy and decision making. Journal of business ethics, 138, 327-347.
Saffiotti, A. (1997). The uses of fuzzy logic in autonomous robot navigation. Soft computing, 1, 180-197.
Sammons, P. (1995). Key characteristics of effective schools: A review of school effectiveness research. B & MBC Distribution Services, 9 Headlands Business Park, Ringwood, Hants BH24 3PB, England, United Kingdom..
Sangaiah, A. K., Gao, X. Z., & Abraham, A. (Eds.). (2016). Handbook of Research on Fuzzy and Rough Set Theory in Organizational Decision Making. IGI Global.
Seecharan, T., Labib, A., & Jardine, A. (2018). Maintenance strategies: decision making grid vs Jack-Knife diagram. Journal of Quality in Maintenance Engineering, 24(1), 61-78.
Singh, R. K., Khilwani, N., & Tiwari, M. K. (2007). Justification for the selection of a reconfigurable manufacturing system: a fuzzy analytical hierarchy based approach. International Journal of Production Research, 45(14), 3165-3190.
Slack, N. (1987). The flexibility of manufacturing systems. International Journal of Operations & Production Management.
Stadtler, H. (2005). Supply chain management and advanced planning––basics, overview and challenges. European journal of operational research, 163(3), 575-588.
Suganthi, L., Iniyan, S., & Samuel, A. A. (2015). Applications of fuzzy logic in renewable energy systems–a review. Renewable and sustainable energy reviews, 48, 585-607.
Thangavel, K., & Pethalakshmi, A. (2009). Dimensionality reduction based on rough set theory: A review. Applied soft computing, 9(1), 1-12.
Thornton, C., Hutter, F., Hoos, H. H., & Leyton-Brown, K. (2012). Auto-weka: Automated selection and hyper-parameter optimization of classification algorithms. CoRR, abs/1208.3719.
Tripathy, B. K., Acharjya, D. P., & Cynthya, V. (2013). A framework for intelligent medical diagnosis using rough set with formal concept analysis. arXiv preprint arXiv:1301.6011.
Tummala, V. R., Phillips, C. L., & Johnson, M. (2006). Assessing supply chain management success factors: a case study. Supply Chain Management: An International Journal.
Uzsoy, R., Lee, C. Y., & Martin-Vega, L. A. (1992). A review of production planning and scheduling models in the semiconductor industry part I: system characteristics, performance evaluation and production planning. IIE transactions, 24(4), 47-60.
Uzsoy, R., Lee, C. Y., & Martin-Vega, L. A. (1994). A review of production planning and scheduling models in the semiconductor industry part II: Shop-floor control. IIE transactions, 26(5), 44-55.
Verderame, P. M., Elia, J. A., Li, J., & Floudas, C. A. (2010). Planning and scheduling under uncertainty: a review across multiple sectors. Industrial & engineering chemistry research, 49(9), 3993-4017.
Wozniak, M. (2013). Hybrid classifiers: methods of data, knowledge, and classifier combination (Vol. 519). Springer.
Xiao, B., & Benbasat, I. (2007). E-commerce product recommendation agents: Use, characteristics, and impact. MIS quarterly, 137-209.
Xu, D., Zhang, X., & Feng, H. (2019). Generalized fuzzy soft sets theory‐based novel hybrid ensemble credit scoring model. International Journal of Finance & Economics, 24(2), 903-921.
Yoon, K. P., & Hwang, C. L. (1995). Multiple attribute decision making: an introduction. Sage publications.
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