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Discover,	Develop,	and	De-Risk	module	materials,	
architectures,	accelerated	testing	protocols,data	analytics,	
and	financial	models	to	reduce	the	LCOE	of	solar	energy	
Unexpected	mismatching	during	
midday	requires	further	
investigation	
RdTools	collaboration	(collaboration	with	NREL	and	kWh	Analytics)	
•  We	are	building	a	robust	clear	sky	detection	method	for	Rdtools,	an	open-source	
software	toolset	for	calculating	degradation	rate	of	PV	systems.		
Previous	clear	sky	detection	work	
•  Work	by	SNL	researchers	Reno	and	Hansen1	provides	detection	implemented	in	PVLib	
•  Our	goal	is	to	automatically	learn	the	best	PVLib	parameters	by	scoring	PVLib	clear	sky	
labels	versus	known	clear	sky	labels	across	locations	and	data	frequencies	
•  Known	clear	sky	labels	determined	from	NSRDB,	which	provides	satellite	data	across	
continental	US	from	1998-2015	at	a	4x4	km	resolution	
Capability	1:	Data	Management	&	Analytics	
Benjamin	Ellis1,	Robert	White2,	Mike	Deceglie2,	Birk	Jones3,	Josh	Stein3,	Jonathan	Trinastic4,	Anubhav	Jain1	
1Lawrence	Berkeley	National	Lab,	2National	Renewable	Energy	Lab,	3Sandia	National	Lab,	4	U.S.	Department	of	Energy	Sunshot	program	
•  Ensure	DuraMat	data	infrastructure	supports	analytics	tasks	
•  Provide	data	analytics,	machine	learning,	and	software	
support	to	PV	researchers	within	collaborative	projects	
•  Develop	PV	analysis	software	toolkits	and	predictive	models	
to	estimate	performance	and	degradation	
•  Help	researchers	use	and	understand	PV	toolkits,	e.g.,	
through	interactive	web	sites	and	visualizations	
•  Formalizing	data	standards	and	best	practices	with	other	
capabilities	/	collaborate	on	DuraMat	Data	Hub	
•  Developed	clear	sky	classification	software	based	on	GHI	
•  Developing	a	PV	degradation	web	dashboard	
•  In	progress:	I-V	curve	analysis,	image	analysis,	and	combined	
accelerated	stress	testing	analysis	
•  Data	Hub	design	complete,	data	sets	collected	from	most	
capabilities	
•  New	clear	sky	models	may	allow	for	site-agnostic	
classification	of	clear	/	cloudy	days	based	on	GHI	
measurements	alone	and	with	no	tunable	parameters	
•  Currently	seeking	collaborators	with	PV	data	in	need	of	data	
analysis	and	machine	learning	
Capability	Goals	 Accomplishments	 Outcomes	and	Impact	DuraMAT	Capabilities	
1.  Data	Management	&	Analytics,	DuraMAT	Data	Hub	
2.  Predictive	Simulation	
3.  Advanced	Characterization	&	Forensics	
4.  Module	Testing	
5.  Field	Deployment	
6.  Techno-Economic	Analysis	
		
Capability	Development	
IV	curve	data	analytics	 Mismatching	trends	at	SNL	
Clear	sky	detection	 Clear	sky	detection	results	
Timeline	
PV	degradation	dashboard	
Future	work	
Field	
deployment	
DataHub	 Data	analytics	
Materials	
Forensics	&	
Characterization	
Predictive	
simulation	
Module	
testing	
Techno-economic	
analysis	
Data	analytics	and	DuraMAT	Data	Hub	
•  Develop	and	advertise	software	tools	for	analytics,	modeling	
and	visualization	of	stored	data	sets	
•  Be	able	to	combine	analyses	across	capabilities	and	projects	
Capabilities	and	researchers	
upload	and	disseminate	data		
Discover	new	data	sets	and	
software	tools	to	enhance	research	
Capabilities,	Data	Hub,	and	analytics	
teams	can	communicate	on	data	storage	
and	software	tools	
Data	analytics	
•  Directly	collaborate	on	research	projects	
•  Provide	data	mining,	analytics,	visualization,	and	
machine	learning	support	
•  Capabilities	and	analytics	team	can	prototype	software	
tools	and	provide	feedback	
•  Software	developed	during	research	process	will	be	
made	freely	available	to	other	PV	researchers	
IV	curve	analytics	software	(collaboration	with	SNL)	
•  Sandia	National	Labs	is	collecting	in-situ,	string	level	IV	curves	
•  We	are	developing	open-source	software	to	provide	PV	researchers	with	consistent	
and	transparent	methods	for	IV	data	preprocessing,	cleaning,	and	feature	extraction	
•  The	software	detects	typical	IV	parameters	(e.g.	Rs,	Rsh,	Voc,	Isc,	Pmax,	etc)	along	with	
detection	of	mismatch	in	string-level	curves	
	
Mismatch	detection	and	parameter	extraction	
•  This	analytics	software	is	currently	being	used	to	investigate	mismatching	and	
degradation	in	systems	at	SNL	
•  Automatic	identification	of	mismatching	along	IV	curves	is	useful	for	monitoring	
performance,	calculating	degradation	degradation,	and	diagnosing	failures	and	faults	
•  Extracted	IV	parameters	can	also	be	used	for	PV	modeling	and	diagnostics;	the	
extracted	values	closely	agree	with	those	measured	by	IV	tracing	system	
Data	Hub	development	
•  Hub	will	host	data	ranging	from	time-series	performance	
data	to	spectroscopic	studies	to	literature	surveys	and	
fundamental	materials	properties	
•  Establish	data	and	metadata	standards	and	best	practices	
•  Implement	advanced	sorting,	filtering,	querying,	and	
aggregation	methods	to	link	data	sets	from	multiple	
specializations,	projects,	and	experiments	
1.  M.	J.	Reno	and	C.	W.	Hansen,	“Identification	of	periods	of	clear	sky	irradiance	in	time	series	of	GHI	
measurements,”	Renew.	Energy,	vol.	90,	pp.	520–531,	2016.	
2.  Jordan,	D.	C.,	Deline,	C.,	Kurtz,	S.	R.,	Kimball,	G.	M.	&	Anderson,	M.	Robust	PV	Degradation	Methodology	and	
Application.	IEEE	J.	Photovoltaics	8,	525–531	(2018)	
Automatic	mismatch	identification	 IV	parameter	extraction	
Mismatch	occurrence	versus	irradiance	
Occurrence	of	mismatch	per	time	of	day	
Late	 afternoon	 mismatch	 likely	
due	to	shading	
Cumulative	mismatch	over	time	
Future	work	
We	have	several	other	projects	underway,	including:	
	
•  Image	analysis	for	evaluating	contact	angles	of	anti-soiling	coatings	
•  Relating	combined	accelerating	stress	testing	(C-AST)	and	field	measurements	
•  Working	with	other	data	analytics	efforts	in	the	field	(e.g.,	Case	Western)	
•  Analyzing	temperature	data	across	the	U.S.	(e.g.,	to	determine	string	sizing)	
Frequent	 mismatching	 during	
high	 irradiance	 periods	 in	 both	
strings	is	unexpected	
	
Investigating	 if	 modules	 are	
obstructed	or	systematic	faults	
Two	strings	with	same	modules	
display	different	behavior	in	
cumulative	mismatch	detected	–
we	are	currently	investigating	
the	cause	(e.g.	different	system	
locations/configurations	or	
faulty	hardware)	
Optimization	algorithms	and	resutls	
•  Gaussian	processes	and	genetic	algorithms	search	PVLib	parameter	space	by	
predicting	regions	of	low	error	based	on	previous	score/parameter	pairs	
•  We	determine	a	new	set	of	pvlib	parameters	that	greatly	outperform	the	defaults	
•  Next:	integration	into	pvlib	and/or	rdtools	
Web	dashboards	for	exploratory	data	analysis	
•  PV	analysis	tools	are	typically	implemented	as	software	packages,	e.g.,	in	Python	or	
MATLAB.	However,	it	can	be	difficult	for	some	users	to	conduct	exploratory	analyses	
with	these	tools.	
•  We	are	developing	a	web	dashboard	that	connects	together	data	(here,	from	
PVOutput.org)	with	state-of-the-art	analysis	tools	(e.g.,	rdtools	degradation	models)	
D. Jordan et al. showed2 that clear
sky filtering produces degradation
rates closer to expectation and
20% different than without filtering!
Generally clear
Scattered cloudsPersistent clouds
Can we design an algorithm that automatically and
reliably distinguishes clear sky periods based on GHI?
Approach: use satellite data to modify a published clear
sky detection technique1
Using satellite clear sky labels as a guide,
we can design an “optimized” clear sky
detection algorithm with no parameters
that works better than existing pvlib
across sites and data frequencies!
Heatmaps	
plot	F0.5	
scores,	or	
classification	
accuracy,	of	
clear	sky	
algorithms	
Visual inspection confirms that clear sky
classifications from the optimized
algorithm are more relevant and correct.
default	
optimized	
Sample	GHI	
data	and	clear	
sky	
classifications	
for	BMS	site,	
30	minute	data	
frequency	
Automated contact angle
analysis for evaluating anti-
soiling coatings
Interested	in	a	data	analytics	
project	collaboration?	
	
Contact	us:	ajain@lbl.gov	
This	work	was	funded	as	part	of	the	Durable	Modules	
Consortium	(DuraMAT),	an	Energy	Materials	Network	
Consortium	funded	by	the	U.S.	Department	of	
Energy,	Office	of	Energy	Efficiency	&	Renewable	
Energy,	Solar	Energy	Technologies	Office.

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DuraMat Data Management and Analytics

  • 1. Discover, Develop, and De-Risk module materials, architectures, accelerated testing protocols,data analytics, and financial models to reduce the LCOE of solar energy Unexpected mismatching during midday requires further investigation RdTools collaboration (collaboration with NREL and kWh Analytics) •  We are building a robust clear sky detection method for Rdtools, an open-source software toolset for calculating degradation rate of PV systems. Previous clear sky detection work •  Work by SNL researchers Reno and Hansen1 provides detection implemented in PVLib •  Our goal is to automatically learn the best PVLib parameters by scoring PVLib clear sky labels versus known clear sky labels across locations and data frequencies •  Known clear sky labels determined from NSRDB, which provides satellite data across continental US from 1998-2015 at a 4x4 km resolution Capability 1: Data Management & Analytics Benjamin Ellis1, Robert White2, Mike Deceglie2, Birk Jones3, Josh Stein3, Jonathan Trinastic4, Anubhav Jain1 1Lawrence Berkeley National Lab, 2National Renewable Energy Lab, 3Sandia National Lab, 4 U.S. Department of Energy Sunshot program •  Ensure DuraMat data infrastructure supports analytics tasks •  Provide data analytics, machine learning, and software support to PV researchers within collaborative projects •  Develop PV analysis software toolkits and predictive models to estimate performance and degradation •  Help researchers use and understand PV toolkits, e.g., through interactive web sites and visualizations •  Formalizing data standards and best practices with other capabilities / collaborate on DuraMat Data Hub •  Developed clear sky classification software based on GHI •  Developing a PV degradation web dashboard •  In progress: I-V curve analysis, image analysis, and combined accelerated stress testing analysis •  Data Hub design complete, data sets collected from most capabilities •  New clear sky models may allow for site-agnostic classification of clear / cloudy days based on GHI measurements alone and with no tunable parameters •  Currently seeking collaborators with PV data in need of data analysis and machine learning Capability Goals Accomplishments Outcomes and Impact DuraMAT Capabilities 1.  Data Management & Analytics, DuraMAT Data Hub 2.  Predictive Simulation 3.  Advanced Characterization & Forensics 4.  Module Testing 5.  Field Deployment 6.  Techno-Economic Analysis Capability Development IV curve data analytics Mismatching trends at SNL Clear sky detection Clear sky detection results Timeline PV degradation dashboard Future work Field deployment DataHub Data analytics Materials Forensics & Characterization Predictive simulation Module testing Techno-economic analysis Data analytics and DuraMAT Data Hub •  Develop and advertise software tools for analytics, modeling and visualization of stored data sets •  Be able to combine analyses across capabilities and projects Capabilities and researchers upload and disseminate data Discover new data sets and software tools to enhance research Capabilities, Data Hub, and analytics teams can communicate on data storage and software tools Data analytics •  Directly collaborate on research projects •  Provide data mining, analytics, visualization, and machine learning support •  Capabilities and analytics team can prototype software tools and provide feedback •  Software developed during research process will be made freely available to other PV researchers IV curve analytics software (collaboration with SNL) •  Sandia National Labs is collecting in-situ, string level IV curves •  We are developing open-source software to provide PV researchers with consistent and transparent methods for IV data preprocessing, cleaning, and feature extraction •  The software detects typical IV parameters (e.g. Rs, Rsh, Voc, Isc, Pmax, etc) along with detection of mismatch in string-level curves Mismatch detection and parameter extraction •  This analytics software is currently being used to investigate mismatching and degradation in systems at SNL •  Automatic identification of mismatching along IV curves is useful for monitoring performance, calculating degradation degradation, and diagnosing failures and faults •  Extracted IV parameters can also be used for PV modeling and diagnostics; the extracted values closely agree with those measured by IV tracing system Data Hub development •  Hub will host data ranging from time-series performance data to spectroscopic studies to literature surveys and fundamental materials properties •  Establish data and metadata standards and best practices •  Implement advanced sorting, filtering, querying, and aggregation methods to link data sets from multiple specializations, projects, and experiments 1.  M. J. Reno and C. W. Hansen, “Identification of periods of clear sky irradiance in time series of GHI measurements,” Renew. Energy, vol. 90, pp. 520–531, 2016. 2.  Jordan, D. C., Deline, C., Kurtz, S. R., Kimball, G. M. & Anderson, M. Robust PV Degradation Methodology and Application. IEEE J. Photovoltaics 8, 525–531 (2018) Automatic mismatch identification IV parameter extraction Mismatch occurrence versus irradiance Occurrence of mismatch per time of day Late afternoon mismatch likely due to shading Cumulative mismatch over time Future work We have several other projects underway, including: •  Image analysis for evaluating contact angles of anti-soiling coatings •  Relating combined accelerating stress testing (C-AST) and field measurements •  Working with other data analytics efforts in the field (e.g., Case Western) •  Analyzing temperature data across the U.S. (e.g., to determine string sizing) Frequent mismatching during high irradiance periods in both strings is unexpected Investigating if modules are obstructed or systematic faults Two strings with same modules display different behavior in cumulative mismatch detected – we are currently investigating the cause (e.g. different system locations/configurations or faulty hardware) Optimization algorithms and resutls •  Gaussian processes and genetic algorithms search PVLib parameter space by predicting regions of low error based on previous score/parameter pairs •  We determine a new set of pvlib parameters that greatly outperform the defaults •  Next: integration into pvlib and/or rdtools Web dashboards for exploratory data analysis •  PV analysis tools are typically implemented as software packages, e.g., in Python or MATLAB. However, it can be difficult for some users to conduct exploratory analyses with these tools. •  We are developing a web dashboard that connects together data (here, from PVOutput.org) with state-of-the-art analysis tools (e.g., rdtools degradation models) D. Jordan et al. showed2 that clear sky filtering produces degradation rates closer to expectation and 20% different than without filtering! Generally clear Scattered cloudsPersistent clouds Can we design an algorithm that automatically and reliably distinguishes clear sky periods based on GHI? Approach: use satellite data to modify a published clear sky detection technique1 Using satellite clear sky labels as a guide, we can design an “optimized” clear sky detection algorithm with no parameters that works better than existing pvlib across sites and data frequencies! Heatmaps plot F0.5 scores, or classification accuracy, of clear sky algorithms Visual inspection confirms that clear sky classifications from the optimized algorithm are more relevant and correct. default optimized Sample GHI data and clear sky classifications for BMS site, 30 minute data frequency Automated contact angle analysis for evaluating anti- soiling coatings Interested in a data analytics project collaboration? Contact us: ajain@lbl.gov This work was funded as part of the Durable Modules Consortium (DuraMAT), an Energy Materials Network Consortium funded by the U.S. Department of Energy, Office of Energy Efficiency & Renewable Energy, Solar Energy Technologies Office.