日韩福利电影在线_久久精品视频一区二区_亚洲视频资源_欧美日韩在线中文字幕_337p亚洲精品色噜噜狠狠_国产专区综合网_91欧美极品_国产二区在线播放_色欧美日韩亚洲_日本伊人午夜精品

Search

Solar

Monday
30 Dec 2024

Unpacking Solar-Project Data Analytics

30 Dec 2024   

The PV industry is embracing artificial intelligence and machine learning (ML) techniques to automate operations and maintenance (O&M) diagnostics and predictive analytics in PV systems. More transparency and standard definitions are needed, however, as US-based Sandia Labs scientists Joshua Stein and Marios Theristis explain.

Just over a decade ago, Sandia National Laboratories founded the PV Performance Modeling Collaborative (PVPMC). PVPMC is increasing transparency and accuracy in PV system performance modeling, according to Sandia, with the organization helping to bring together stakeholders to improve modeling practices. Joshua Stein, senior scientist at Sandia, thinks it is time for a similar effort to shed light onto data analytics for PV plant performance monitoring.

“There is a lack of standardization and harmonization in the way people are talking about fault analytics and monitoring,” he explained to pv magazine. Currently, some companies are offering services that include data analytics and fault identification and classification based on monitoring data from PV power plants. However, these companies each use their own set of failure definitions, which means that it is very difficult to compare and contrast the value of these services.

“Imagine if every doctor or hospital you visited used their own set of diagnoses and clinical practices.” said Stein. “It would be very difficult and confusing to get a second opinion. Most mature industries standardize their definitions of faults and mitigation procedures. Solar PV is not quite there yet.”

For one thing, the introduction of machine learning techniques to automate fault detection in PV systems has further muddied the picture. Stein was careful to clarify that he is not against machine learning. “Automated ML-based fault detection is beneficial in that it can lead to highly scalable analytics,” said Stein.

Rethinking KPIs

Technical key performance indicators (KPIs) are essential for evaluating PV power plants, from the development stage to contractual agreements between asset owners and O&M providers.

“While IEC and ASTM standards define some KPIs, such as performance ratio (PR) and capacity tests, their calculation methods often vary or rely on user interpretation, leading to uncertain results,” said Stein’s Sandia Labs colleague Marios Theristis.

“For instance, there is significant flexibility in data handling, which can introduce biases that impact contracts and financial decisions. Without clear KPI definitions and harmonized calculations, contracts may be unfairly affected – not due to actual under-performance or over-performance, but because of calculation bias,” he added.

Bad data is data that is not useful because it has been obtained through inadequate means. It contains errors or it isn’t clean. This in turn creates problems for PV stakeholders who rely on it to tell them what their system’s actual performance is.

Standard industry practice is for asset owners to subcontract an O&M provider to take care of operation and maintenance. This means a contractual agreement dictating the power plant is being maintained appropriately and meeting certain KPIs.

“If you have bad data quality, then there will be some bias introduced in the KPI estimation. This bias can be positive, or it can be negative. In a hypothetical scenario where the PR bias is negative, then the O&M provider would be unfairly paying penalties caused by data quality, and not under-performance,” said Theristis.

This also works in reverse where an O&M provider could benefit, due to bias caused by data quality and not plant over-performance. Theristis continued: “In some cases, the operational PR is compared to the pre-construction PR generated by a PV design software, leading to an apples-to-oranges comparison: Is the PR difference due to an overly optimistic pre-construction simulation or actual underperformance?”

Program transparency

Theristis has begun a new program to tackle these issues, the PV O&M Analytics Collaborative (PVMAC). He introduced the project at the EU PVSEC conference held in Vienna in September 2024.

“Our objective is to create a collaborative network to improve transparency in PV analytics software and services, engage with monitoring/analytic companies, O&M providers, asset owners, insurers, and help these stakeholders come together to agree on what standards are needed and improve the overall market’s transparency,” he said.

The team is also using Sandia Labs’ supercomputers to run simulations across the United States to reduce uncertainties in KPI estimation.

PVMAC is still very new, but over the next few months the researchers will meet with industry to carry out interviews and tests such as blind analytic comparisons. This involves giving stakeholders real or synthetic performance data and asking them to identify and classify faults and calculate KPIs.

“Blind comparisons are a great way to evaluate the state of the industry practice and the consistency between different providers.

“We expect that these comparisons will highlight discrepancies in how different companies define faults and calculate KPIs,” said Stein.

“We plan to host dedicated sessions on O&M analytics, failure and KPI harmonization at our upcoming PVPMC workshops,” added Theristis.

Standardizing performance

The two scientists hope that by shining light on any inconsistencies, it will be easier to build consensus on the steps needed for standardization. For example, an O&M provider that offers a performance guarantee could be incentivized to not clean irradiance sensors well because a dirty pyranometer makes the PV performance appear better than it actually is. The goal for Stein and Theristis is to quickly determine why a PV plant is under-performing and suggest strategies for addressing the problems.

A lot is at stake, even a small percentage of underperformance for a large PV plant results in significant financial losses. Stein reckons measuring the performance of a PV system is not that different from measuring the health of a person.

“You collect data about your patient, e.g., vital signs, medical history, if these indicate a more serious problem, you order more tests. At least in medicine, standards are pretty much international, so it doesn’t matter where you go in the world, you will be evaluated in a similar manner.

“I’m hoping that with PV, we can have a similar system. The oil and gas industry, for instance, has been standardized. If you go to an oil rig or a gas turbine in any country in the world, the standards are similar,” he said.

Tangled web

Poor power plant management can also pose problems. Theristis warned that although many O&M products and services are available, asset owners may not have “a quantitative knowledge” of the potential benefits of investing in data quality, O&M, and analytic capabilities. “These solutions have not achieved transparency and lack independent validation,” he said.

Using supervised machine learning methods for classification is preferable to unsupervised, according to Stein, because the former allows you to tell the algorithm what the categories are.

“But many people opt for unsupervised, which basically says there’s a problem without necessarily specifying the problem,” said Stein. “It can get tangled up in clustering algorithms which say all these problems are similar somehow and then if you use the same practice on multiple data sets you can end up with clustered data, but it is clustered in for different reasons.

“That’s one of the dangers of machine learning; it works for a particular data set, but it’s hard to extend it to a different data set that you haven’t trained it on.”

If machine learning is to be used effectively to monitor fault detection, the industry must first agree on how these faults are defined. Not all companies selling and using AI or machine learning solutions to identify faults are using these methods consistently and transparently, Stein said.

“What we’ve seen is the problem is not all companies are doing the same thing. Some companies are doing very good work and have very valuable products but there’s nobody out there actually coming up with the standards and validation so those companies can be properly valued, right?”

The scientist warned that ‘AI hype’ might be to blame. “Many companies advertise that their software uses AI technology, but few are willing to describe exactly how it is being used. And so, each company has their own sort of ‘diagnostic manual’ for what can go wrong with the PV system,” he said.

“Artificial intelligence is just a buzzword sometimes.”

More News

Loading……
www.欧美精品一二区| 成人涩涩网站| 黄色在线观看www| 色偷偷色偷偷色偷偷在线视频| 国产精品原创| 日韩综合久久| 欧美重口另类| 中文无码久久精品| 西西人体一区二区| 国产主播一区二区| 久久久综合九色合综国产精品| 国产精品久久99| 午夜久久久久久电影| 欧美日韩国产123区| 好男人社区在线视频| 国产黄色在线| 第84页国产精品| 国产精品45p| 亚洲欧美亚洲| 久久66热偷产精品| 国产欧美日韩在线看| 欧美日韩精品国产| 精品日韩一区二区三区| 女人天堂在线| 欧美电影免费看| 亚洲老女人视频免费| 精品91久久久久| 成人动漫av在线| 亚洲精品欧美在线| 日韩欧美色综合| 国产中文字幕在线视频| 欧美va视频| 欧美肉体xxxx裸体137大胆| 国产精品乱看| 国产亚洲污的网站| 欧洲色大大久久| 午夜男人视频在线观看| 久草免费在线视频| 欧美人与物videos另类xxxxx| 久久av一区二区三区| 国产亚洲欧美日韩在线一区| 欧美日韩美少妇| 精品三级久久久久久久电影聊斋| 日本综合字幕| 亚洲电影在线一区二区三区| 成人99免费视频| 色悠悠亚洲一区二区| 天天操天天艹| 成av人电影在线观看| 国产国产一区| 国产在线日韩| heyzo久久| 久久成人久久爱| 亚洲一区二区av电影| 日本电影免费看| 六月婷婷综合| 欧美日韩国产探花| 久久精品亚洲精品国产欧美kt∨| 欧美午夜不卡视频| 在线观看免费高清完整| 荡女精品导航| 国模少妇一区二区三区| 亚洲综合无码一区二区| 亚洲综合一区二区| 橘梨纱av一区二区三区在线观看| 岛国在线视频网站| 女生裸体视频一区二区三区| 久久精品亚洲国产奇米99| 精品久久一区二区三区| 爱福利在线视频| 国产二区精品| 中文欧美字幕免费| а√最新版地址在线天堂| 九七影院97影院理论片久久| 日韩在线卡一卡二| 日本电影亚洲天堂一区| 超碰在线caoporn| 国产精品成人a在线观看| 国产精品区一区二区三区| 国产三级av在线| 国产精伦一区二区三区| 粉嫩高潮美女一区二区三区| 日韩一区二区三区免费观看| 永久免费毛片在线播放| 亚洲一区二区三区高清| 天天爽夜夜爽夜夜爽精品视频| 91这里只有精品| 国产天堂在线播放视频| 欧美大片一区| 婷婷一区二区三区| 日韩激情av| 99精品国产在热久久下载| 一本久久精品一区二区| 丰满诱人av在线播放| 亚洲专区一区| 7777精品久久久大香线蕉| а√天堂资源国产精品| 国产激情视频一区二区在线观看| 精品sm捆绑视频| 亚洲伊人精品酒店| 99久久精品情趣| 日漫免费在线观看网站| 99热国内精品| 欧美性大战久久| 热久久久久久| 久久久一区二区| 国产h在线观看| 在线综合视频| 欧美成人国产一区二区| 99re6热只有精品免费观看| 久久精品欧美一区二区三区不卡| 国产高清在线看| 99精品福利视频| 日韩精品在线看片z| 国产伦精品一区二区三区免费优势| 久久久久久久久久久久久女国产乱| 欧美日韩免费做爰大片| 亚洲大胆av| 精品国产一区二区三区忘忧草| www.久久东京| 亚洲丰满少妇videoshd| sis001欧美| 久久精子c满五个校花| 三区四区在线视频| 丝袜亚洲另类欧美| 性色a∨人人爽网站| 亚洲色图插插| 日韩欧美一级精品久久| 国产午夜一区| 欧美日韩不卡一区| 国产亚洲成av人片在线观黄桃| 一区二区三区小说| 日韩成人综合网| 亚洲桃色在线一区| 青青热久免费精品视频在线18| 日本一区二区视频在线观看| 99热国产在线| 99精品国产视频| 人妖欧美1区| 久久色成人在线| 国产第一页在线| 99久久精品国产一区| 手机av免费在线| 久久色在线视频| 欧美成人资源| 亚洲国产精品人人做人人爽| 欧美在线一级| 亚洲h在线观看| 好吊妞视频这里有精品| 欧美亚洲一区二区在线| 免费观看不卡av| 国产99精品| 久久久精品天堂| 色资源网站在线观看| 日韩片欧美片| 国产丝袜在线精品| av在线下载| 精品国产91乱高清在线观看| 成人在线视频免费观看| 免费在线稳定资源站| 国产精品久久久久久久裸模 | 久久久久91| 91福利精品在线观看| 毛片毛片毛片毛片| 综合激情成人伊人| 欧洲杯半决赛直播| 99riav在线| 波多野吉衣av| 影院免费视频| 免费av高清| 绯色av一区| 中文字幕在线视频网| 三区在线观看| 国产对白国语对白| 台湾十八成人网| 日韩一区二区在线看片| 久久精品国产久精国产| 在线国产日韩| 巨大黑人极品videos精品| 日本在线不卡视频一二三区| 日本午夜一本久久久综合| 99精品视频在线免费播放| 欧美一区二区少妇| 国产女优裸体网站| 欧美色精品天天在线观看视频| jlzzjlzz国产精品久久| 亚洲成人三级| 亚洲成人av在线电影| xnxx国产精品| 狠狠色丁香婷婷综合| 羞羞答答国产精品www一本| 久久亚洲风情| 久久这里只有精品视频网| 亚洲成a人在线观看| 国产黄视频网站| 国产高清av在线| 懂色av一区二区| 久久一区二区三区电影| 欧美午夜影院| 麻豆成人在线|