Difference between revisions of "Operations & Maintenance"
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| − | <b> | + | <b>Beyond Predictive Maintenance – The Art Of The Possible With IoT | #IOTSWC19 |
| − | </b><br> | + | </b><br>IoT is fundamentally transforming how we live, work and play. As companies begin to move past the now well-trodden path of initial use cases in IoT such as predictive maintenance, they are beginning to harness the power of sensor-enabled, real-world data to reimagine why, how, and where they deploy IoT- and ultimately, how they make money from it. Lessons from these trailblazers illustrate that success lies in focusing not just on the technology, but more holistically, on a true transformation of the business. In this session we will cover novel IoT use cases and critical ingredients for success in enterprise IoT initiatives. The IoT Solutions World Congress is the leading international event that links the Internet of Things with industry. For more information visit http://www.iotsworldcongress.com/ |
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| − | <b> | + | <b>Predictive Maintenance at the Dutch Railways (Ivo Everts) |
| − | </b><br> | + | </b><br>Ivo Everts, a data driver at GoDataDriven, talks about how at the Dutch Railways, we are collecting 10s of billions sensor measurements coming from the train fleet and railroad every year. We use these data to conduct predictive maintenance, such as predicting failure of the train axle bearings and detecting air leakage in the train braking pipes. This is extremely useful, as these failures are notoriously difficult to detect during regular maintenance, while occurring frequently and causing severe delays, damage to material and reputy, and costs. |
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| − | <b> | + | <b>"Aircraft predictive maintenance using [[Python]]/ML" - Amar Verma (Kiwi Pycon X) |
| − | </b><br> | + | </b><br>Amar Verma Applied machine learning for predictive maintenance (PdM) with objectives to reduce aircraft downtime & in-workshop costs "Aircraft engines must be serviced, overhauled and examined on a very regular basis. This is driven by several factors, such as the total flying hours, on-ground taxi time, time from last overhaul, parts with limited life cycle, FAA bulletins & advisories, as well as for issues reported by sensors, ground crew & flight deck. In case of more than one engines on the aircraft, most possibly the engines are non-coordinated in their maintenance requirements. This is very obvious as the engines could be maintained, installed on separate occasions. Whenever an aircraft engine is needed to be serviced, it causes direct impact to cashflows due to some of these factors: * plane need to be grounded if alternative engine not available |
| + | * engine maintenance is delayed due to * parts not available * specifically skilled engineer not available * workshop space not available * Aircrafts (generally) use more than one engine, so the negative impact is amplified * Aircraft's flying schedule can be impacted causing rebookings, schedule conflicts and direct impact to cashflows Our solution addressed this challenging problem by combining & deriving few different algorithms for different parts of the problem: - determine extent of the engine deterioration using a simplified variant of Kalman filtering method - predict the optimal scheduling window using adaptation of genetic algorithm Innovation & Engineering hacker. Expert in AI/ML, Algorithms & Big Databases #kiwipycon #kiwipycon2019 #python #pycon #wellington #programming Kiwi PyCon is an annual conference aimed at promoting and educating people about the [[Python]] programming language. The New Zealand Python User Group is proud to present the ninth national [[Python]] conference in New Zealand. | ||
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Revision as of 20:46, 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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