Renewable Energy Optimization

Azure Data Engineering

We design and build secure, scalable Azure data pipelines that modernize how your business collects, processes, and delivers information.

Advanced Analytics & BI

From Power BI dashboards to enterprise reporting, we transform complex data into clear, actionable insights for faster decisions.

Cloud Security & Governance

Protect your data with enterprise-grade Azure claud security, governance frameworks, and compliance-ready architecture.

Case Study

Driving Better Decisions Through Data

This case study highlights how Amesium Analytics transforms raw data into meaningful insights that support smarter business decisions. By analysing challenges, implementing tailored data solutions, and delivering clear outcomes, we help organisations improve efficiency, strengthen operations, and achieve measurable growth.

Renewable Energy Optimization

Delivering predictive analytics and forecasting models to improve energy production and operational planning.

Client

  • Renewable Energy Provider

Duration

  • 10 Weeks

Team Package

  • Premium Package (4-Person Team)

INTRODUCTION

A renewable energy provider operating wind, solar, and battery storage assets needed better forecasting tools to optimise production, reduce operational costs, and improve demand prediction. We built an Azure-based predictive analytics solution tailored for real-time planning.

THE CHALLENGE

The provider faced complexity across multiple energy sources:

They required an automated, scalable, predictive analytics solution.

THE SOLUTION

We developed a predictive analytics platform using Azure Databricks and Power BI to unify energy datasets and deliver accurate forecasts.

This enabled precise production planning and pricing strategy adjustments.

OUR APPROACH (4 Steps)

1. Data Discovery & Integration

Collected and integrated data from wind turbines, solar arrays, battery systems, and external weather sources.

2. ML Model Development

Built predictive models in Azure Databricks for production and demand forecasting.

3. Analytics & Reporting Layer

Developed dashboards for production trends, forecast accuracy, and asset performance.

4. Deployment, Training & Handover

Implemented automated retraining pipelines and provided training for operational teams.

OUT RESULTS

The energy provider saw measurable improvements:

  • Up to 30% improvement in forecast accuracy

  • Improved energy trading strategy with real-time pricing insights

  • Reduced manual forecasting workload

  • Optimised asset usage across all energy units

  • Enhanced visibility for planning and operations teams

TECHNOLOGIES USED

    • Azure Databricks

    • Azure Machine Learning

    • Azure Data Lake

    • Power BI

    • Azure Data Factory

    • Weather/External Data Integration APIs

Sign up for Newsletter

Stay updated with the latest insights, data strategies, and practical guides to help you make smarter business decisions.