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Product Quality Driven Auto-Prognostics: Low-Cost Digital Solution for SMEs

机译:产品质量驱动自动预测:中小企业低成本数字解决方案

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Setting out existing prognostics solutions in small and medium enterprises (SMEs) is accompanied by challenges. These include employing expensive sensors, acquisition systems; and attending geometric limitations. Additionally, these solutions call for a specialist to take on feature engineering, machine learning algorithm selection, etc. Presented in this paper is a low-cost digital solution (intelligently integrate cost-cutting off-the-shelf technologies) for SMEs via product quality driven auto-prognostics. First, we develop upon existing solutions by addressing their drawbacks viz. cost, geometric limitations via a new product quality-centered condition monitoring strategy. Every SME must investigate the quality of their products, and therefore the authors believe this to be a low-cost solution. Next, the proposed solution integrates automated machine learning via Auto-WEKA, an off-the-shelf open-source technology. Lastly, the practical advantages of the proposed solution over the existing sensor-based solution were investigated via a case study. Results depict that this low-cost prognostics solution is vital for maintenance planning in SMEs.
机译:在中小企业(中小企业)中阐述现有的预测解决方案伴随着挑战。这些包括采用昂贵的传感器,采集系统;并参加几何限制。此外,这些解决方案呼叫专家采用本文提出的专业技术,机器学习算法选择等是通过产品质量的低成本数字解决方案(智能地整合成本切断的现成技术)驱动的自动预测。首先,我们通过解决其缺点viz来开发现有解决方案。成本,通过新产品以质量为中心的条件监测策略的几何限制。每个中小企业都必须调查其产品的质量,因此作者认为这是一种低成本的解决方案。接下来,该解决方案通过自动WEKA,一家现成的开源技术集成了自动化机器学习。最后,通过案例研究研究了对现有的基于传感器的解决方案的提出的解决方案的实际优点。结果描述,这种低成本的预测解决方案对于中小企业的维护计划至关重要。

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