Martins, Cesar H.R. [UNESP]Aguiar, Paulo R. [UNESP]Frech Jr., Arminio [UNESP]Bianchi, Eduardo C. [UNESP]2014-05-272014-05-272013-09-24IFAC Proceedings Volumes (IFAC-PapersOnline), p. 1524-1529.1474-6670http://hdl.handle.net/11449/76632Grinding is a workpiece finishing process for advanced products and surfaces. However, the constant friction between workpiece and grinding wheel causes the latter to lose its sharpness, thereby impairing the result of the grinding process. When this occurs, the dressing process is essential to sharpen the worn grains of the grinding wheel. The dressing conditions strongly influence the performance of the grinding operation; hence, monitoring them throughout the process can increase its efficiency. The purpose of this study was to classify the wear condition of a single-point dresser using intelligent systems whose inputs were obtained by digitally processing acoustic emission signals. Two multilayer perceptron (MLP) neural networks were compared for their classification ability, one using the root mean square (RMS) statistics and another the ratio of power (ROP) statistics as input. In this study, it was found that the harmonic content of the acoustic emission signal is influenced by the condition of the dresser, and that the condition of the tool under study can be classified by using the aforementioned statistics to feed a neural network. © IFAC.1524-1529engAcoustic emissionDresser wearDressing operationMultilayer perceptronNeural networkAcoustic emission signalClassification abilityFinishing processGrinding operationsHarmonic contentsMulti layer perceptronMultilayer perceptron neural networksNeural networks modelAcoustic emissionsGrinding (machining)Grinding wheelsIntelligent systemsManufactureNeural networksNeural networks models for wear patterns recognition of single-point dresserTrabalho apresentado em evento10.3182/20130619-3-RU-3018.00222Acesso aberto2-s2.0-84884299018