Principal Engineer, Solar PV Tech Assessment

RWE Gruppe

Chicago, IL

JOB DETAILS
SALARY
$194,000–$206,000 Per Year
SKILLS
Analysis Skills, Artificial Intelligence (AI), Asset Management, Benchmarking, Best Practices, Campaigns, Change Requests/Orders, Construction, Continuous Improvement, Data Modeling, Data Quality, Data Sets, Due Diligence, Electrical Engineering, Energy Modeling, Funding, Loans, Machine Learning, Microsoft Internet Explorer Browser, Model Validation, Operational Audit, People Management, Performance Analysis, Performance Management, Performance Modeling, Physics, Productivity Management, Project Lifecycle, Quality Assurance, Reconciliation, Regulations, Risk, Shading, Simulation, Solar Engineering, Statistical Modeling, Technical Analysis, Technical Support, Testing, Theater Production
LOCATION
Chicago, IL
POSTED
2 days ago

Principal Engineer, Solar PV Tech AssessmentLocation(s):Chicago, IL, US, 60654Company: RWE Americas, LLC Employment Type: Full time, permanent Start: As soon as possible Functional area: Engineering Remuneration: ExemptThe Principal Engineer, Solar PV Energy Production, is a senior individual-contributor role responsible for elevating the technical quality and long-term defensibility of energy production work across the project lifecycle. Reporting to the VP of Solar PV Systems, this role owns the methodological backbone of solar modeling practices such as early-stage production modeling best-practices, post-COD reconciliation with FID assumptions, production uncertainty modeling, proactive coordination for execution phase and the integration of emerging analytical capabilities into engineering workflows.This person sets the standard for how the company models, validates, and continuously improves energy yield estimates across utility-scale solar assets, and is expected to work with meaningful autonomy on problems that span development, construction, and operations.Role ResponsibilitiesOwn and evolve the company's production modeling methodology for utility-scale solar, incorporating advances in satellite irradiance datasets, loss factor characterization, and inter-annual variability treatmentEstablish and maintain a living set of internal best-practice standards for PVSyst (or equivalent tool) configuration — covering horizon shading, bifacial gain, soiling profiles, and DC/AC loss assumptions — ensuring consistent, auditable, and defensible outputs across the portfolioDevelop internally consistent uncertainty frameworks that account for resource variability, model uncertainty, and equipment performance risk in a way that satisfies both lender due diligence requirements and internal investment decision-makingServe as the primary internal technical resource for independent engineer (IE) engagement during project financing and tax equity funding, supporting responses to technical findings and defending design assumptions with analytical rigorLead capacity testing oversight — defining test protocols, reviewing pre-test models, and reconciling test results against expected performance to support lender and tax equity requirementsSupport MET station campaign design and quality assurance during construction, ensuring that sensor placement, instrument selection, and data validation practices will support bankable long-term performance assessmentProactively assess the energy production impact of design changes that arise mid-construction — equipment substitutions, layout modifications, or scope changes — and develop analytical frameworks to quantify and mitigate change-order risk before it materializesBuild and maintain physics-based simulation models for operating assets that go beyond P50/P90 benchmarking — enabling energy potential estimation under variable conditions, loss attribution, and degradation tracking grounded in first-principles performance modelingCollaborate with asset management and O&M teams to translate operational data into modeling feedback loops, improving pre-COD assumptions and creating a more accurate picture of realized versus predicted performance across the fleetAct as the subject‑matter expert for the integration of AI and machine learning capabilities into the solar engineering workflow — defining where these methods create genuine accuracy improvements in layout development, energy modeling and operational diagnosticsCollaborate with technology and data teams to ensure that AI‑driven outputs are grounded in physical models and do not introduce opaque or unvalidatable assumptions into financeable deliverablesProvide expert guidance and review for senior engineers and design leads on design development, elevating the overall quality of modeling work without carrying direct people management responsibilityMonitor developments in PV simulation research, industry benchmarking (e.g., PVPS Task 13), and regulatory shifts that affect performance modeling standards, and translate relevant findings into actionable updates to internal practiceJob Requirements and ExperiencesA Bachelor's or Master's degree in Electrical Engineering, Physics, or a closely related engineering discipline is requiredA minimum of 12 years of progressively senior experience in solar PV engineering, with a material portion focused on utility‑scale (100 MW+) projects in the US market is requiredDeep, hands‑on expertise in PVSyst, including configuration of bifacial models, near shading scenes, horizon profiles, and inter‑annual variability treatment; working familiarity with alternative or complementary platforms (e.g., SAM, Solargis, NSRDB‑based workflows)Demonstrated experience producing and defending bankable energy yield assessments, including direct engagement with independent engineers during project financingSubstantive experience with energy uncertainty modeling — whether through internal probabilistic tools or platforms such as Power UQ — and the ability to explain uncertainty outputs to non‑technical financial audiencesWorking knowledge of PV system physics — irradiance transposition, temperature coefficients, bifacial gain mechanics, inverter clipping, and DC degradation — sufficient to identify errors in models and outputs that tools do not flag automaticallyExperience in an asset management or operational analytics role that involved reconciling predicted versus actual performance, or developing monitoring‑based loss attribution frameworksFamiliarity with MET station infrastructure design — including pyranometer selection, soiling station placement, and data quality validation — particularly in a construction oversight or owner's engineer contextExposure to machine learning or statistical modeling approaches applied to solar performance — irradiance interpolation, soiling estimation, or anomaly detection — and a clear‑eyed view of where these methods add value versus introduce riskExperience with capacity testing protocols (e.g., ASME PTC 13 or equivalent) and post‑construction performance reconciliationParticipation in industry working groups, IEA PVPS activities, or similar forums where modeling standards are shapedApplicants must be legally authorized to work in the United States. RWE Americas is unable to sponsor or take over sponsorship of employment visas at this time.Pay range: The annual base salary range for this position in Illinois is $194,000 – $206,000.Benefits offered: Medical, Dental, Vision, Life Insurance, Short‑Term Disability, Long‑Term Disability, 401(k) match, Flexible Spending Accounts, EAP, Education Assistance, Parental Leave, Paid time off, and Holidays. Eligible employees also participate in short‑term incentives, in addition to salary.All qualified applicants will receive consideration for employment without regard to race, color, sex, sexual orientation, gender identity, religion, national origin, disability, veteran status, or other legally protected status.#J-18808-Ljbffr

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