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The Readback Signal Prediction based on Machine Learning Technique in Bit Patterned Media Recording System

机译:基于机器学习技术的读取信号预测在比特图案化媒体记录系统中

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The Bit patterned media recording (BPMR) system is the new challenge technology for the magnetic recording systems to be produced in the future. The readback signal of the BPMR system included 2D interference as inter-track interference (ITI) and inter-symbol interference (ISI) to decrease system performance. Therefore, the data of these readback signals were interesting for finding the new model technique from machine learning to analyze about characteristics of the actual readback signal without ISI and ITI. Previous work used the machine learning technique to describe the readback signal of the Two-dimensional magnetic recording (TDMR) system. The TDMR is one of the new challenging technology for magnetic recording systems also. Therefore, in this work, we would like to use the machine learning technique such as K-Neighbors, Decision Tree, Random Forest, AdaBoost, Logistic Regression, Deep Learning, etc. A classification model is used to predict the actual readback signal output without 2D interference, track misregistration (TMR) and position jitter problems in the BPMR system. The new models can predict and perform accuracy percentage more than 90% from all models in the simulation result, especially in Deep Learning, can achieve higher accuracy than 99% and lower loss.
机译:该位图案化媒体记录(BPMR)系统是将来生产的磁记录系统的新挑战技术。 BPMR系统的返回信号包括2D干扰作为跟踪间干扰(ITI)和符号间干扰(ISI)以降低系统性能。因此,这些回读信号的数据对于从机器学习找到新的模型技术来分析关于没有ISI和ITI的实际回读信号的特性。以前的工作用来了机器学习技术来描述二维磁记录(TDMR)系统的回读信号。 TDMR也是磁记录系统的新具有挑战性技术之一。因此,在这项工作中,我们想使用k邻居,决策树,随机森林,adaboost,逻辑回归,深度学习等机器学习技术等。分类模型用于预测实际回读信号输出2D干扰,跟踪误解(TMR)和BPMR系统中的位置抖动问题。新型号可以预测和执行仿真结果中所有模型的精度百分比,特别是在深度学习中,可以获得比99%更高的准确性和更低的损耗。

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