Difference between revisions of "Operations & Maintenance"
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| − | <b> | + | <b>Predictive Maintenance Use Cases From The Energy Sector - Umid Akhmedov |
| − | </b><br> | + | </b><br>In this session Umid will discuss some use cases from an energy company that is taking advantage of predictive analytics to make the world greener. Key takeaways: Align with the business strategy, Build a solid data backbone, formalize the process. #HyperightDataTalks is a video podcast of interviews with some of the most innovative minds, enterprise practitioners, technology and service providers, start-ups and academics, working with Data Science, Data Management, Big Data, Analytics, AI, IOT and much more. For more interviews, audio podcast and videos from some of the best presentations from our Data Summits, please visit http://www.hyperight.com Presentation recorded during Maintenance Analytics Summit 2018 - http://maintenanceanalyticssummit.com/ |
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| + | <b>Deep Learning for Predictive Quality And Predictive Maintenance | ||
| + | </b><br>Artificial Intelligence plays a major role in Industry 4.0 and more industrial companies than ever are starting to utilize their data to gain value and insights. The industrial domain offers very promising opportunities but this potential also comes with very specific requirements and challenges. This talk gives insights into the characteristics of Industrial AI and how state of the art deep learning methods can be applied to solve complex problems and bring more value to companies. Simon Stiebllehner (Head of AI at craftworks and lecturer in statistics and digital marketing at Vienna University of Economics and Business and University of Applied Sciences of WKW) and Daniel Ressi (Data Scientist at craftwork) talk at Vienna Data Science Group – Knowledgefeed vol. 27. Slides are available here: http://bit.ly/VDSG_Kf27rev | ||
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| + | <b>Developing a Predictive Maintenance Program - Noah Schellenberg, Tetra Pak Data Science CoE | ||
| + | </b><br>The session will talk about the life cycle approach to building a predictive maintenance model always focusing on the value. Tetra Pak has been on a predictive maintenance journey for several years and we will walk through the steps made and lessons learned in building the program. Particularly focus will be on how Data Science experts are best deployed in PdMA projects and the PoV process. Key Takeaways Identifying the Total Opportunity, Driving towards the Empirical Business Case, Sustaining the Value, Lesson Learned #HyperightDataTalks is a video podcast of interviews with some of the most innovative minds, enterprise practitioners, technology and service providers, start-ups and academics, working with Data Science, Data Management, Big Data, Analytics, AI, IOT and much more. For more interviews, audio podcast and videos from some of the best presentations from our Data Summits, please visit http://www.hyperight.com/ | ||
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| + | <b>Preventing Failures with Predictive Maintenance Webinar | ||
| + | </b><br>What would it mean to your organization if you could predict system failures or quality issues before they happen? Preventing failures can help your organization reduce unscheduled downtime, waste, and rework – and avoid costly disruptions in operations. With predictive analytics, it’s possible to proactively manage maintenance and improve operational efficiency by discovering the chance of a failure before it takes place. In this past webinar, we discussed how you can utilize [[Microsoft]] Azure Machine Learning, R, and the Cortana Intelligence Suite to predict and prevent system failure, and explored the benefits of calculating KPIs such as Remaining Useful Life, Time to Failure, and Failure within a certain tim | ||
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| + | <b>Building Machine Learning Models for Predictive Maintenance in the Oil & Gas Industry w/ Databricks | ||
| + | </b><br>For each drilling site, there are thousands of different equipment operating simultaneously 24/7. For the oil & gas industry, the downtime can cost millions of dollars daily. As current standard practice, the majority of the equipment are on scheduled maintenance with standby units to reduce the downtime. Scheduled maintenance treats each equipment similarly with simple metrics, such as calendar time or operating time. Using machine learning models to predict equipment failure time accurately can help the business schedule the predictive maintenance accordingly to reduce the downtime and maintenance cost. We have huge sets of time series data and maintenance records in the system, but they are inconsistent with low quality. One particular challenge we have is that the data is not continuous and we need to go through the whole data set to find where the data are continuous over some specified window. Transforming the data for different time windows also presents a challenge: how can we quickly pick the optimized window size among the various choices available and perform transformation in parallel? Data transformations such as the Fourier transforms or wavelet transforms are time consuming and we have to parallelize the operation. We adopted Spark dataframes on Databricks for our computation. Here are the two major steps we took to carry out the efficient distributed computing for our data transformations: 1. Identify which segments have continuous data by scanning through a sub-sampled data set. 2. Pick different windows and transform data within the window. 3. Transform each window column into one cell as a list. 4. Preserve the order of the data in each cell by collecting the timestamp and the corresponding parameter as a list of dictionaries, and then reorder the list based on the timestamp element in the dictionaries. About: Databricks provides a unified data analytics platform, powered by Apache Spark™, that accelerates innovation by unifying data science, engineering and business. | ||
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Revision as of 21:05, 11 September 2020
Youtube search... ...Google search
- Case Studies
- AI for Predictive Maintenance Applications in Industry – Examining 5 Use Cases | Pamela Bump - Techemergence
- Industrial AI Applications – How Time Series and Sensor Data Improve Processes | Daniel Faggella - Techemergence
- Deloitte Consulting takes aim at artificial intelligence (AI) software tools for predictive maintenance | Military/Aerospace Electronics ...to build the Joint Common Foundation (JCF) artificial intelligence development environment for the Joint Artificial Intelligence Center (JAIC).
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