North American Clean Energy September/October 2019 Issue

Page 8

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Buyer Beware

Do advanced analytics really deliver? by Steve Hanawalt

These days, you can’t avoid the hype touting all the ways advanced analytics (AA) optimizes the performance of solar and wind power assets. “Advanced analytics” is a broad term for a range of techniques and tools that takes data and uses it to generate valuable business insights, and make predictions and recommendations. For the purposes of this article, the umbrella term “advanced analytics” refers to a range of techniques and tools, including artificial intelligence (AI) and machine learning (ML). If the buzz about advanced analytics is to be believed, you simply plumb your operating data up to a shiny new web service and the insights pour forth—saving you millions! But is it really that easy? What kind of real-world results can you expect? What data infrastructure and pre-processing do you already need to have in place for these applications to deliver reliable ROI? Before moving into advanced analytics, what about making standard industry analytics work properly? Are you confident you’re capturing all the asset performance improvement opportunities available? Buyer beware—there are a lot of claims out there from software vendors and consultants looking to sell unproven or misapplied technology in the renewable energy space. On the other hand, some AA solutions generate significant opportunities for improvement in project returns—when properly applied. Therein lies the challenge: What is the right application of AA in the renewable energy space?

The Five Keys to Successful Implementation

To help find the answer, let’s look at the five keys of successful AA implementation in solar and wind: 1. The right data platform: Do you have a robust and scalable data platform with a fully integrated timeseries, transactional, and metadata layer? If you don’t, you won’t be able to meet the requirements of the following two keys. 2. A robust data cleansing process: Operating data from renewable energy plants is high in volume, frequency, and noise (meaning it’s full of missing and bad or corrupted data). Many advanced analytics run just fine in a laboratory, but fail miserably when they encounter the mess of real-world operating data. A robust and automated data cleansing pre-process is mandatory. There is no direct flight from raw data to insights.

3. A powerful event detection and classification engine: When you’re pulling millions of data points from your plants over the course of a year, you need a reliable tool to help you separate worthless data from data you can use. Manually classifying every event and failure type used in the analytic and anomaly tell you that a tracker has stopped tracking. However, if your detection process would require an army plant SCADA system isn’t pulling tracker control setpoint of data analysts - your data platform needs data, advanced analytics can detect that a tracker has stopped an industrial-strength, automated event tracking. In other words, before you invest in moving up the detection and classification engine that’s asset optimization pyramid, make sure you have each of the designed by experts in solar and wind five keys to a successful implementation. power. General-purpose algorithms won’t Consider the typical utility-scale solar power plant: It be able to associate events with renewable has thousands, even millions of non-instrumented electric energy asset failure modes and effects. generators. Sensors well downstream of these generators don’t They might alert you to a problem, but have the sensitivity to detect performance issues associated that won’t be much help when it comes to with these generators. So how can we know if our solar determining the cause, and prioritizing the generators are performing optimally? We have three choices: issues that expose you to the most risk. • Manually inspect them—a very cost-prohibitive option. 4. The right tools: Make sure you’re applying • Use thermal imagery—a good, but periodic, option. the right set of tools to your problem. AA • Use advanced analytics—a good continuous option relies on a diverse set of tools (models) because the typical solar power plant does not have to classify data and events or to find sensors located close enough to the generation equipment performance anomalies. It is not always to detect subtle shifts in operating performance. necessary, and sometimes not even a good Advanced analytics solves other problems specific to idea, to use an advanced algorithm when a our industry as well, such as using machine learning to linear regression will suffice. detect subtle changes in a turbine’s power curve, or to catch 5. Dedicated subject matter experts (SMEs): the temperature derating of a solar inverter. Additionally, Most often, generating corrective and automated workflows incorporating AA can generate a work preventive actions from the insights order with all details about failure mode, failure cause, and raised by AA is neither easy nor obvious. repair code recorded by the software. By integrating the It requires solar and wind power event detection, insight, and action steps into an automated operational SMEs to interpret. These workflow, we can reap the benefits of advanced analytics. technicians, analysts, and engineers know how the equipment really works, its To Buy or Not to Buy? failure modes and causes, and the proper That’s the big question. Is advanced analytics worth the actions for resolution. You won’t reach investment? It can be. But if you’re trying to solve the wrong your software ROI goals without a skilled problem, or if you don’t have the right data platform, business team dedicated to the process of post-AA processes, and subject matter experts in place, you’re far better analysis and resolution. off investing your money getting the basics done right first.

When to Consider Advanced Analytics—and When Not To

Advanced analytics should be considered for anomalies that aren’t or can’t be detected using the plant SCADA or traditional monitoring applications. For example, you don’t need AA to tell you your wind turbine or solar inverter is offline, and you shouldn’t have to use AA to

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SEPTEMBER•OCTOBER2019 /// www.nacleanenergy.com

Steve Hanawalt is co-founder and executive vice president of Power Factors. Power Factors consolidates multiple operational data sources, asset hierarchies, and metadata frameworks to create a single cloud-based remote asset management platform that works with today’s large-scale portfolios.

Power Factors /// pfdrive.com


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