{ "labelLang" : "hun", "responseDate" : "2024-03-29 08:56", "content" : { "otype" : "JournalArticle", "mtid" : 32082713, "status" : "VALIDATED", "published" : true, "unhandledTickets" : 0, "deleted" : false, "lastRefresh" : "2022-07-30T14:16:42.164+0000", "lastModified" : "2021-07-30T12:42:26.533+0000", "created" : "2021-06-28T11:08:11.633+0000", "creator" : { "otype" : "Author", "mtid" : 10002397, "link" : "/api/author/10002397", "label" : "Kundrák János (Gépgyártástechnológia)", "familyName" : "Kundrák", "givenName" : "János", "published" : true, "oldId" : 10002397, "snippet" : true }, "lastDuplumOK" : "2021-11-26T05:05:26.579+0000", "lastDuplumSearch" : "2021-11-26T05:05:26.579+0000", "validated" : "2021-10-15T16:00:56.473+0000", "validator" : { "otype" : "Admin", "mtid" : 10067876, "link" : "/api/admin/10067876", "label" : "MTMT API (MTMT API user, admin)", "familyName" : "MTMT", "givenName" : "API", "published" : true, "snippet" : true }, "core" : false, "citation" : true, "publicationPending" : false, "type" : { "otype" : "PublicationType", "mtid" : 24, "link" : "/api/publicationtype/24", "label" : "Folyóiratcikk", "code" : 24, "otypeName" : "JournalArticle", "listPosition" : 1, "published" : true, "oldId" : 24, "snippet" : true }, "subType" : { "otype" : "SubType", "mtid" : 10000059, "link" : "/api/subtype/10000059", "label" : "Szakcikk (Folyóiratcikk)", "name" : "Szakcikk", "nameEng" : "Article", "docType" : { "otype" : "PublicationType", "mtid" : 24, "link" : "/api/publicationtype/24", "label" : "Folyóiratcikk", "code" : 24, "otypeName" : "JournalArticle", "listPosition" : 1, "published" : true, "oldId" : 24, "snippet" : true }, "listPosition" : 101, "published" : true, "oldId" : 10000059, "snippet" : true }, "category" : { "otype" : "Category", "mtid" : 1, "link" : "/api/category/1", "label" : "Tudományos", "published" : true, "oldId" : 1, "snippet" : true }, "languages" : [ { "otype" : "Language", "mtid" : 10002, "link" : "/api/language/10002", "label" : "Angol", "name" : "Angol", "nameEng" : "English", "published" : true, "oldId" : 2, "snippet" : true } ], "firstAuthor" : "Kuppuswamy, R.", "authorships" : [ { "otype" : "PersonAuthorship", "mtid" : 96693771, "link" : "/api/authorship/96693771", "label" : "Kuppuswamy, R. ✉", "listPosition" : 1, "share" : 0.25, "first" : true, "last" : false, "corresponding" : true, "familyName" : "Kuppuswamy", "givenName" : "R.", "authorTyped" : true, "editorTyped" : false, "otherTyped" : false, "type" : { "otype" : "AuthorshipType", "mtid" : 1, "link" : "/api/authorshiptype/1", "label" : "Szerző", "code" : 0, "published" : true, "oldId" : 0, "snippet" : true }, "published" : false, "snippet" : true }, { "otype" : "PersonAuthorship", "mtid" : 96693772, "link" : "/api/authorship/96693772", "label" : "Jani, F.", "listPosition" : 2, "share" : 0.25, "first" : false, "last" : false, "corresponding" : false, "familyName" : "Jani", "givenName" : "F.", "authorTyped" : true, "editorTyped" : false, "otherTyped" : false, "type" : { "otype" : "AuthorshipType", "mtid" : 1, "link" : "/api/authorshiptype/1", "label" : "Szerző", "code" : 0, "published" : true, "oldId" : 0, "snippet" : true }, "published" : false, "snippet" : true }, { "otype" : "PersonAuthorship", "mtid" : 96693773, "link" : "/api/authorship/96693773", "label" : "Naidoo, S.", "listPosition" : 3, "share" : 0.25, "first" : false, "last" : false, "corresponding" : false, "familyName" : "Naidoo", "givenName" : "S.", "authorTyped" : true, "editorTyped" : false, "otherTyped" : false, "type" : { "otype" : "AuthorshipType", "mtid" : 1, "link" : "/api/authorshiptype/1", "label" : "Szerző", "code" : 0, "published" : true, "oldId" : 0, "snippet" : true }, "published" : false, "snippet" : true }, { "otype" : "PersonAuthorship", "mtid" : 96693774, "link" : "/api/authorship/96693774", "label" : "de, Jongh Q.", "listPosition" : 4, "share" : 0.25, "first" : false, "last" : true, "corresponding" : false, "familyName" : "de", "givenName" : "Jongh Q.", "authorTyped" : true, "editorTyped" : false, "otherTyped" : false, "type" : { "otype" : "AuthorshipType", "mtid" : 1, "link" : "/api/authorshiptype/1", "label" : "Szerző", "code" : 0, "published" : true, "oldId" : 0, "snippet" : true }, "published" : false, "snippet" : true } ], "title" : "A study on intelligent grinding systems with industrial perspective", "identifiers" : [ { "otype" : "PublicationIdentifier", "mtid" : 18957366, "link" : "/api/publicationidentifier/18957366", "label" : "DOI: 10.1007/s00170-021-07315-9", "source" : { "otype" : "PlainSource", "mtid" : 6, "link" : "/api/publicationsource/6", "label" : "DOI", "type" : { "otype" : "PublicationSourceType", "mtid" : 10001, "link" : "/api/publicationsourcetype/10001", "label" : "DOI", "mayHaveOa" : true, "published" : true, "snippet" : true }, "name" : "DOI", "nameEng" : "DOI", "linkPattern" : "https://doi.org/@@@", "publiclyVisible" : true, "published" : true, "oldId" : 6, "snippet" : true }, "validState" : "IDENTICAL", "idValue" : "10.1007/s00170-021-07315-9", "realUrl" : "https://doi.org/10.1007%2Fs00170-021-07315-9", "published" : false, "snippet" : true }, { "otype" : "PublicationIdentifier", "mtid" : 18957367, "link" : "/api/publicationidentifier/18957367", "label" : "WoS: 000660401800005", "source" : { "otype" : "PlainSource", "mtid" : 1, "link" : "/api/publicationsource/1", "label" : "WoS", "type" : { "otype" : "PublicationSourceType", "mtid" : 10003, "link" : "/api/publicationsourcetype/10003", "label" : "Indexelő adatbázis", "mayHaveOa" : false, "published" : true, "snippet" : true }, "name" : "WoS", "nameEng" : "WoS", "linkPattern" : "http://gateway.isiknowledge.com/gateway/Gateway.cgi?&GWVersion=2&SrcAuth=CustomerName&SrcApp=CustomerName&DestLinkType=FullRecord&KeyUT=@@@&DestApp=WOS", "publiclyVisible" : true, "published" : true, "oldId" : 1, "snippet" : true }, "validState" : "IDENTICAL", "idValue" : "000660401800005", "realUrl" : "http://gateway.isiknowledge.com/gateway/Gateway.cgi?&GWVersion=2&SrcAuth=CustomerName&SrcApp=CustomerName&DestLinkType=FullRecord&KeyUT=000660401800005&DestApp=WOS", "published" : false, "snippet" : true }, { "otype" : "PublicationIdentifier", "mtid" : 18957365, "link" : "/api/publicationidentifier/18957365", "label" : "Scopus: 85107745402", "source" : { "otype" : "PlainSource", "mtid" : 3, "link" : "/api/publicationsource/3", "label" : "Scopus", "type" : { "otype" : "PublicationSourceType", "mtid" : 10003, "link" : "/api/publicationsourcetype/10003", "label" : "Indexelő adatbázis", "mayHaveOa" : false, "published" : true, "snippet" : true }, "name" : "Scopus", "linkPattern" : "http://www.scopus.com/record/display.url?origin=inward&eid=2-s2.0-@@@", "publiclyVisible" : true, "published" : true, "oldId" : 3, "snippet" : true }, "idValue" : "85107745402", "realUrl" : "http://www.scopus.com/record/display.url?origin=inward&eid=2-s2.0-85107745402", "published" : false, "snippet" : true } ], "journal" : { "otype" : "Journal", "mtid" : 12743, "link" : "/api/journal/12743", "label" : "INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY 0268-3768 1433-3015", "pIssn" : "0268-3768", "eIssn" : "1433-3015", "reviewType" : "REVIEWED", "noIF" : false, "sciIndexed" : true, "scopusIndexed" : true, "lang" : "FOREIGN", "hungarian" : false, "published" : true, "oldId" : 12743, "snippet" : true }, "volume" : "115", "firstPage" : "3811", "lastPage" : "3827", "firstPageOrInternalIdForSort" : "3811", "pageLength" : 17, "publishedYear" : 2021, "abstractText" : "The digitization thrust on high-value manufacturing and services opens up new opportunities for ensuring total system uptime, reliability, and efficiency particularly for mission-critical high-value assets. The digitization process evolves intelligent manufacturing systems (IMS) which transforms maintenance into predictive reliability for achieving consistent quality throughout manufacturing process. This article unveils the intelligent grinding systems (IGS) for challenging grinding applications. In order to provide a better chance for value addition, previous work has been scrutinized extensively in the following aspects: grinding models, process design algorithms, and process monitoring. This then leads into an analysis of various previously designed IGS. The main focus, especially in the early 2000s, was mainly database development and parameter selection, which then shifted to process monitoring and control as particular technology advances were made. In the various goals that were investigated, it was evident that researchers were aiming for an online real-time system. This notion was driven by the advances in artificial intelligence and improved monitoring sensors, for example, acoustic emission sensors and even other unusual sensors like microphones for more economical and improved data collection and analysis. Although tremendous strides have been made, a substantial amount of work is still required in achieving a full-fledged real-time intelligent grinding system. The comprehensive findings on IGS system concludes that the real-time process update has been improved from few hours to milliseconds. © 2021, The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature.", "keywords" : [ { "otype" : "Keyword", "mtid" : 3693, "link" : "/api/keyword/3693", "label" : "Artificial intelligence", "published" : true, "oldId" : 3693, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1013013, "link" : "/api/keyword/1013013", "label" : "Process control", "published" : true, "oldId" : 1013013, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1013550, "link" : "/api/keyword/1013550", "label" : "Real time systems", "published" : true, "oldId" : 1013550, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1015108, "link" : "/api/keyword/1015108", "label" : "Interactive computer systems", "published" : true, "oldId" : 1015108, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1065988, "link" : "/api/keyword/1065988", "label" : "Grinding (machining)", "published" : true, "oldId" : 1065988, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1069271, "link" : "/api/keyword/1069271", "label" : "Process design", "published" : true, "oldId" : 1069271, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1095874, "link" : "/api/keyword/1095874", "label" : "Acoustic emission testing", "published" : true, "oldId" : 1095874, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1104089, "link" : "/api/keyword/1104089", "label" : "Process monitoring", "published" : true, "oldId" : 1104089, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1140569, "link" : "/api/keyword/1140569", "label" : "Manufacturing process", "published" : true, "oldId" : 1140569, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1208119, "link" : "/api/keyword/1208119", "label" : "Process monitoring and control", "published" : true, "oldId" : 1208119, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1246357, "link" : "/api/keyword/1246357", "label" : "Grinding machines", "published" : true, "oldId" : 1246357, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1275295, "link" : "/api/keyword/1275295", "label" : "Intelligent Manufacturing System", "published" : true, "oldId" : 1275295, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1515968, "link" : "/api/keyword/1515968", "label" : "Condition monitoring", "published" : true, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1538742, "link" : "/api/keyword/1538742", "label" : "Analysis of various", "published" : true, "snippet" : true }, { "otype" : "Keyword", "mtid" : 1751108, "link" : "/api/keyword/1751108", "label" : "Acoustic emission sensors", "published" : true, "snippet" : true }, { "otype" : "Keyword", "mtid" : 2024252, "link" : "/api/keyword/2024252", "label" : "Technology advances", "published" : true, "snippet" : true }, { "otype" : "Keyword", "mtid" : 2325311, "link" : "/api/keyword/2325311", "label" : "Grinding process prediction", "published" : true, "snippet" : true }, { "otype" : "Keyword", "mtid" : 2325312, "link" : "/api/keyword/2325312", "label" : "Intelligent grinding system", "published" : true, "snippet" : true }, { "otype" : "Keyword", "mtid" : 2325313, "link" : "/api/keyword/2325313", "label" : "Real-time-based grinding", "published" : true, "snippet" : true }, { "otype" : "Keyword", "mtid" : 2325314, "link" : "/api/keyword/2325314", "label" : "Sensors in grinding", "published" : true, "snippet" : true }, { "otype" : "Keyword", "mtid" : 2325315, "link" : "/api/keyword/2325315", "label" : "Database development", "published" : true, "snippet" : true }, { "otype" : "Keyword", "mtid" : 2325316, "link" : "/api/keyword/2325316", "label" : "High value manufacturing", "published" : true, "snippet" : true } ], "digital" : true, "printed" : null, "sourceYear" : 2021, "foreignEdition" : true, "foreignLanguage" : true, "fullPublication" : true, "conferencePublication" : false, "nationalOrigin" : false, "missingAuthor" : false, "oaType" : "NONE", "oaCheckDate" : "2022-07-30", "oaFree" : false, "citationCount" : 0, "citationCountUnpublished" : 0, "citationCountWoOther" : 0, "independentCitCountWoOther" : 0, "doiCitationCount" : 0, "wosCitationCount" : 0, "scopusCitationCount" : 0, "independentCitationCount" : 0, "unhandledCitationCount" : 0, "citingPubCount" : 0, "independentCitingPubCount" : 0, "unhandledCitingPubCount" : 0, "citedPubCount" : 2, "citedCount" : 2, "ratings" : [ { "otype" : "SjrRating", "mtid" : 11214518, "link" : "/api/sjrrating/11214518", "label" : "sjr:Q1 (2021) Scopus - Industrial and Manufacturing Engineering INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY 0268-3768 1433-3015", "listPos" : 60, "rankValue" : 0.24, "type" : "journal", "ratingType" : { "otype" : "RatingType", "mtid" : 10002, "link" : "/api/ratingtype/10002", "label" : "sjr", "code" : "sjr", "published" : true, "snippet" : true }, "subject" : { "otype" : "ClassificationExternal", "mtid" : 2209, "link" : "/api/classificationexternal/2209", "label" : "Scopus - Industrial and Manufacturing Engineering", "published" : true, "oldId" : 2209, "snippet" : true }, "ranking" : "Q1", "calculation" : "DIRECT", "published" : true, "snippet" : true } ], "ratingsForSort" : "Q1", "references" : [ { "otype" : "Reference", "mtid" : 21473096, "link" : "/api/reference/21473096", "label" : "1. Karadogan, A., Kahriman, A., Ozer, U., Application of fuzzy set theory in the selection of underground mining method (2008) J South Afr Inst Min Metall, 108 (2), pp. 73-79. , http://www.scielo.org.za/scielo.php?script=sci_arttext&pid=S2225-62532008000200002&lng=en&nrm=iso", "listPosition" : 1, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473095, "link" : "/api/reference/21473095", "label" : "2. Cai, R., Morgen, M.N., Development of intelligent grinding database (2007) Key Eng Mater, 329, pp. 21-26", "listPosition" : 2, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473094, "link" : "/api/reference/21473094", "label" : "3. Hanafy, M., Elmaraghy, H., Integrated products–systems design environment using Bayesian networks (2017) Int J Comput Integr Manuf, 30 (7), pp. 708-723", "listPosition" : 3, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473093, "link" : "/api/reference/21473093", "label" : "4. Jaitha, A., (2017) An introduction to Bayesian network theory and usage, , https://publications.idiap.ch/downloads/reports/2000/rr00-03.pdf, Dissertation, Claremont College", "listPosition" : 4, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473092, "link" : "/api/reference/21473092", "label" : "5. Sanidhya, P., Elangovan, M., Sugumaran, V., Tool condition monitoring using K-star algorithm (2014) Expert Syst Appl, 41 (6), pp. 2638-2643", "listPosition" : 5, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473091, "link" : "/api/reference/21473091", "label" : "6. Yang, Z., Yu, Z., Grinding wheel wear monitoring based on wavelet analysis and support vector machine (2012) Int J Adv Manuf Technol, 62, pp. 107-121", "listPosition" : 6, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473090, "link" : "/api/reference/21473090", "label" : "7. Arun, A., Rameshkumar, K., Unnikrishnan, D., Sumesh, A., Tool condition monitoring of cylindrical grinding process using acoustic emission sensor (2018) Materials Today: Proceedings, 5 (5), pp. 11888-11899", "listPosition" : 7, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473089, "link" : "/api/reference/21473089", "label" : "8. Zhu, K., Wong, Y.S., Hong, G.S., Wavelet analysis of sensor signals for tool condition monitoring: a review and some new results (2009) Int J Mach Tools Manuf, 49 (7-8), pp. 537-553", "listPosition" : 8, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473088, "link" : "/api/reference/21473088", "label" : "9. Liang, B., Iwnicki, S.D., Zhao, Y., Application of power spectrum, cepstrum, higher order spectrum and neural network analyses for induction motor fault diagnosis (2013) Mech Syst Signal Process, 39 (1-2), pp. 342-360", "listPosition" : 9, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473087, "link" : "/api/reference/21473087", "label" : "10. Jacso, A., Matyasi, G., Szalay, T., The fast constant engagement offsetting method for generating milling tool paths (2019) Int J Adv Manuf Technol, 103, pp. 4293-4305", "listPosition" : 10, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473086, "link" : "/api/reference/21473086", "label" : "11. Inasaki, I., Sensor fusion for monitoring and controlling grinding processes (1999) Int J Adv Manuf Technol, 15, pp. 730-736", "listPosition" : 11, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473085, "link" : "/api/reference/21473085", "label" : "12. Varghese, B., Pathare, S., Gao, R., Guo, C., Malkin, S., Development of a sensor-integrated ‘intelligent’ grinding wheel for in-process monitoring (2000) CIRP Ann, 49 (1), pp. 231-234", "listPosition" : 12, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473084, "link" : "/api/reference/21473084", "label" : "13. Zhang, X., An, W., Cao, H., An expert system of cubic boron nitride (CBN) grinding wheel dressing in cam grinding (2012) Mater Manuf Process, 27 (10), pp. 1095-1100", "listPosition" : 13, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473083, "link" : "/api/reference/21473083", "label" : "14. Hatamura, Y., Nagao, T., Mitsuishi, M., Tanaka, H., Iwata, K., Development of a force controlled automatic grinding system for actual NC machining centers (1989) CIRP Ann, 38 (1), pp. 343-346", "listPosition" : 14, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473082, "link" : "/api/reference/21473082", "label" : "15. Xie, X., Sun, L., Force control based robotic grinding system and application. 12th World Congress on Intelligent Control and Automation (WCICA) (2016) Guilin-China, 2016, pp. 2552-2555", "listPosition" : 15, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473081, "link" : "/api/reference/21473081", "label" : "16. Ling, T., He, Y., Study on new monitoring of AE intelligent grinding. 2nd IEEE Advanced Information Management, Communicates, Electronic and Automation Control Conference (IMCEC) (2018) Xi'an, 2018, pp. 206-209", "listPosition" : 16, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473080, "link" : "/api/reference/21473080", "label" : "17. Karpuschewski, B., Wehmeier, M., Inasaki, I., Grinding monitoring system based on power and acoustic emission sensors (2000) CIRP Ann, 49 (1), pp. 235-240", "listPosition" : 17, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473079, "link" : "/api/reference/21473079", "label" : "18. Inasaki, I., Okamura, K., Monitoring of dressing and grinding processes with acoustic emission signals (1985) CIRP Ann, 34 (1), pp. 277-280", "listPosition" : 18, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473078, "link" : "/api/reference/21473078", "label" : "19. Brian Rowe, W., Li, Y., Mills, B., Allanson, D.R., Application of intelligent CNC in grinding (1996) Comput Ind, 31 (1), pp. 45-60", "listPosition" : 19, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473077, "link" : "/api/reference/21473077", "label" : "20. Xingyu Jiangxinmin Zhang, J.J.W., (2010) Research on Dynamic Intelligent Control System of Grinding Quality. 8Th World Congress on Intelligent Control and Automation, pp. 2192-2197. , https://doi.org/10.1109/WCICA.2010.5554324, Jinan-China", "listPosition" : 20, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473076, "link" : "/api/reference/21473076", "label" : "21. Onishi, T., Sakakura, M., Okanoue, T., Fujiwara, K., Fujiyama, Y., Ohashi, K., Development of the intelligent cylindrical grinding system considering the thermal deformation of a workpiece (2018) Journal of Advanced Mechanical Design, Systems, and Manufacturing, 12, p. 5", "listPosition" : 21, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473075, "link" : "/api/reference/21473075", "label" : "22. Ilhan, A., Mustafa, T., Hazim, E.M., Levent, Ç., An intelligent system approach for surface roughness and vibrations prediction in cylindrical grinding (2012) Int J Comput Integr Manuf, 25 (8), pp. 750-759", "listPosition" : 22, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473074, "link" : "/api/reference/21473074", "label" : "23. Zhao, Z., Hou, C., Duan, S., Online intelligent monitoring system of grinding process based on process modeling. Second International Conference on Instrumentation (2012) Measurement, , https://doi.org/10.1109/IMCCC.2012.80, Computer, Communication and Control. Harbin-China", "listPosition" : 23, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473073, "link" : "/api/reference/21473073", "label" : "24. Chen, X., Limchimchol, T., Monitoring grinding wheel redress-life using support vector machines (2006) Int J Autom Comput, 3, pp. 56-62", "listPosition" : 24, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473072, "link" : "/api/reference/21473072", "label" : "25. Sachin Krishnan, P., Rameshkumar, K., Grinding wheel condition prediction with discrete hidden Markov model using acoustic emission signature (2020) Materials Today: Proceedings, , https://doi.org/10.1016/j.matpr.2019.12.428", "listPosition" : 25, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473071, "link" : "/api/reference/21473071", "label" : "26. Yang, Z., Yu, Z., Xie, C., Huang, Y., Application of Hilbert-Huang transform to acoustic emission signal for burn feature extraction in surface grinding process (2014) Measurement, 47, pp. 14-21", "listPosition" : 26, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473070, "link" : "/api/reference/21473070", "label" : "27. Kuppuswamy, R., Airey, K.A., Feature extraction on an intelligent polycrystalline diamond insert clock testing method and prediction of product performance (2018) Proceedings of the Institution of Mechanical Engineers, Part E: Journal of Process Mechanical Engineering, 232 (6), pp. 723-733", "listPosition" : 27, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473069, "link" : "/api/reference/21473069", "label" : "28. Warren Liao, T., Feature extraction and selection from acoustic emission signals with an application in grinding wheel condition monitoring (2010) Eng Appl Artif Intell, 23 (1), pp. 74-84", "listPosition" : 28, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473068, "link" : "/api/reference/21473068", "label" : "29. Grabec, I., Kuljanic, E., Characterisation of manufacturing processes based upon acoustic emission analysis by neural networks (1994) CIRP Ann, 43 (1), pp. 77-80", "listPosition" : 29, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473067, "link" : "/api/reference/21473067", "label" : "30. Brian Rowe, W., Yinnan, C., Moruzzi, J.L., Mills, B., A generic intelligent control system for grinding (1997) Comput Integr Manuf Syst, 10 (3), pp. 231-241", "listPosition" : 30, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473066, "link" : "/api/reference/21473066", "label" : "31. Kruszyński, B.W., Lajmert, P., An intelligent supervision system for cylindrical traverse grinding (2005) CIRP Ann, 54 (1), pp. 305-308", "listPosition" : 31, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473065, "link" : "/api/reference/21473065", "label" : "32. Lezanski, P., An Intelligent system for grinding wheel condition monitoring (2001) J Mater Process Technol, 109 (3), pp. 258-263", "listPosition" : 32, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473064, "link" : "/api/reference/21473064", "label" : "33. Shin, Y.C., Chen, Y.T., Kumara, S., Framework of an intelligent grinding process advisor (1992) J Intell Manuf, 3, pp. 135-148", "listPosition" : 33, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473063, "link" : "/api/reference/21473063", "label" : "34. Cai, R., Rowe, W.B., Moruzzi, J.L., Morgan, M.N., Intelligent grinding assistant (IGA (©))-system development part I intelligent grinding database (2007) Int J Adv Manuf Technol, 35, pp. 75-85", "listPosition" : 34, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473062, "link" : "/api/reference/21473062", "label" : "35. Maksoud, T.M.A., Atia, M.R., Review of intelligent grinding and dressing operations (2004) Mach Sci Technol, 8 (2), pp. 263-276", "listPosition" : 35, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473061, "link" : "/api/reference/21473061", "label" : "36. Marco Leonesio, G.B., (2019) Hybrid Machine Learning Model-Based Approach for Intelligent Grinding. I Conferenza Italiana Di Robotica E Macchine Intelligenti(I-Rim2019)", "listPosition" : 36, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473060, "link" : "/api/reference/21473060", "label" : "37. Lee, C.H., Jwo, J., Hsieh, H., Lin, C., An intelligent system for grinding wheel condition monitoring based on machining sound and deep learning (2020) IEEE Access, 8, pp. 58279-58289", "listPosition" : 37, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473059, "link" : "/api/reference/21473059", "label" : "38. Siamak, M., Mohammadali, K., Bahman, A., First steps through intelligent grinding using machine learning via integrated acoustic emission sensors (2020) J Manuf Mater Process, 4 (2), p. 35. , https://www.mdpi.com/2504-4494/4/2/35", "listPosition" : 38, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473058, "link" : "/api/reference/21473058", "label" : "39. Liu, Q., Chen, X., Gindy, N., Fuzzy pattern recognition of AE signals for grinding burn (2005) Int J Mach Tools Manuf, 45 (7-8), pp. 811-818", "listPosition" : 39, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473057, "link" : "/api/reference/21473057", "label" : "40. Li, D., Xu, M., Wei, C., Hu, D., Xu, L., A dynamic threshold-based fuzzy adaptive control algorithm for hard sphere grinding (2012) Int J Adv Manuf Technol, 60, pp. 923-932", "listPosition" : 40, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473056, "link" : "/api/reference/21473056", "label" : "41. Lee, C.W., (2000) Intelligent modeling and optimization of grinding processes, , Purdue University, Dissertation", "listPosition" : 41, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473055, "link" : "/api/reference/21473055", "label" : "42. Nguyen, T.A., Butler, D.L., Simulation of surface grinding process, part 2: interaction of the abrasive grain with the work-piece (2005) Int J Mach Tools Manuf, 45, pp. 1329-1336", "listPosition" : 42, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473054, "link" : "/api/reference/21473054", "label" : "43. Lan, S., Jiao, F., Modeling of heat source in grinding zone and numerical simulation for grinding temperature field (2019) Int J Adv Manuf Technol, 103, pp. 3077-3086", "listPosition" : 43, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473053, "link" : "/api/reference/21473053", "label" : "44. Chakrabarti, S., Paul, S., Numerical modelling of surface topography in super abrasive grinding (2008) Int J Adv Manuf Technol, 39, pp. 29-38", "listPosition" : 44, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473052, "link" : "/api/reference/21473052", "label" : "45. Kundrák, J., Markopoulos, A.P., Karkalos, N.E., Numerical simulation of grinding with realistic representation of grinding wheel and workpiece movements: a finite volumes study (2017) Procedia CIRP, 58, pp. 275-280", "listPosition" : 45, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473051, "link" : "/api/reference/21473051", "label" : "46. Zahedi, A., Azarhoushang, B., FEM based modeling of cylindrical grinding process incorporating wheel topography measurement (2016) Procedia CIRP, 46, pp. 201-204", "listPosition" : 46, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473050, "link" : "/api/reference/21473050", "label" : "47. Guo, M., Li, B., Ding, Z., Liang, S.Y., Empirical modeling of dynamic grinding force based on process analysis (2016) Int J Adv Manuf Technol, 86, pp. 3395-3405", "listPosition" : 47, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473049, "link" : "/api/reference/21473049", "label" : "48. Liu, Q., Chen, X., Wang, Y., Gindy, N., Empirical modelling of grinding force based on multivariate analysis (2008) J Mater Process Technol, 203 (1-3), pp. 420-430", "listPosition" : 48, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473048, "link" : "/api/reference/21473048", "label" : "49. Mishra, V.K., Salonitis, K., Empirical estimation of grinding specific forces and energy based on a modified Werner grinding model (2013) Procedia CIRP, 8, pp. 287-292", "listPosition" : 49, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473047, "link" : "/api/reference/21473047", "label" : "50. Keferstein, C.P., Honegger, D., Thurnherr, H., Gschwend, B., Process monitoring in non-circular grinding with optical sensor (2008) CIRP Ann, 57 (1), pp. 533-536", "listPosition" : 50, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473046, "link" : "/api/reference/21473046", "label" : "51. Guo, W., Li, B., Shen, S., Zhou, Q., An intelligent grinding burn detection system based on two-stage feature selection and stacked sparse autoencoder (2019) Int J Adv Manuf Technol, 103 (5-8), pp. 2837-2847", "listPosition" : 51, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473045, "link" : "/api/reference/21473045", "label" : "52. Kim, H.Y., Kim, S.R., Ahn, J.H., Kim, S.H., Process monitoring of centerless grinding using acoustic emission (2001) J Mater Process Technol, 111 (1-3), pp. 273-278", "listPosition" : 52, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473044, "link" : "/api/reference/21473044", "label" : "53. Deiva Nathan, R., Vijayaraghavan, L., Krishnamurthy, R., In-process monitoring of grinding burn in the cylindrical grinding of steel (1999) J Mater Process Technol, 91 (1-3), pp. 37-42", "listPosition" : 53, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473043, "link" : "/api/reference/21473043", "label" : "54. de Aguiar, P., Willett, P., Webster, J., (1999) Acoustic emission applied to detect work-piece burn during grinding, , https://doi.org/10.1520/STP15784S, ASTM International", "listPosition" : 54, "published" : false, "snippet" : true }, { "otype" : "Reference", "mtid" : 21473042, "link" : "/api/reference/21473042", "label" : "55. DeAguiar, P., Oliveira, J.F.G., (1999) Production grinding burn detection using acoustic emission and electric power signals, , https://repositorio.unesp.br/handle/11449/66028, Scopus. https://repositorio.unesp.br/handle/11449/66028", "listPosition" : 55, "published" : false, "snippet" : true } ], "hasCitationDuplums" : false, "userChangeableUntil" : "2021-10-28T12:42:26.247+0000", "directInstitutesForSort" : "", "ownerAuthorCount" : 3, "ownerInstituteCount" : 16, "directInstituteCount" : 0, "authorCount" : 4, "contributorCount" : 0, "hasQualityFactor" : true, "link" : "/api/publication/32082713", "label" : "Kuppuswamy R. et al. A study on intelligent grinding systems with industrial perspective. (2021) INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY 0268-3768 1433-3015 115 3811-3827", "template" : "