Webvar
Virtualization of Metering Systems with AI & Physics-Based Models - logo

Virtualization of Metering Systems with AI & Physics-Based Models

We help energy, oil, and gas operators virtualize complex metering systems using AI and hybrid physics-based models. Our solutions reduce dependency on costly hardware by combining historical metering data, real-time sensor inputs, and cloud-based intelligence to estimate key operational parameters across distributed infrastructure.
awsPurchase this listing from Webvar in AWS Marketplace using your AWS account. In AWS Marketplace, you can quickly launch pre-configured software with just a few clicks. AWS handles billing and payments, and charges on your AWS bill.

About

Accurate metering across complex infrastructures, such as pipelines, substations, or industrial facilities -is critical for efficient operation, system optimization, and regulatory compliance. However, deploying high-precision physical meters at every segment is often cost-prohibitive, hard to maintain, and technically infeasible in remote or extreme environments.

Many systems operate with incomplete or inconsistent metering coverage, leading to blind spots in flow, consumption, or system performance data. Environmental constraints, changing operating conditions, and aging hardware further limit the accuracy and flexibility of conventional instrumentation.

We address these challenges by building AI-augmented metering layers that combine machine learning models, historical metering data collected under verified conditions, and real-time sensor feeds (e.g., pressure, temperature, and flow rate proxies). These systems deliver scalable, adaptive estimations across diverse infrastructure, supplementing or replacing physical meters where appropriate.

Basic featureset:

Cloud-hosted estimation models integrated into metering infrastructure

Real-time performance monitoring based on sensor data

Alerting mechanisms for data anomalies or instrumentation failure

Advanced featureset:

Physics-informed AI models for high accuracy under dynamic conditions

System-wide estimations across hierarchical infrastructure (e.g., feeder → substation → grid)

Continuous learning workflows aligned with operational and environmental changes

Solution architecture:

The architecture builds a virtualized metering layer across oil, gas, or energy systems. Real-time sensor data is ingested via AWS IoT SiteWise and stored in Amazon Timestream. Machine learning models, developed in Amazon SageMaker and trained on historical metering data collected under verified conditions, estimate flow rates, energy transfer, or equipment performance. Predictions are streamed to Amazon QuickSight dashboards or operational systems. AWS Lambda and Step Functions enable automation, monitoring, and periodic retraining.

This design supports:

Scalable metering across infrastructure without proportional hardware cost

Resilience and adaptability in harsh or data-sparse environments

High accuracy and system visibility, even in unmetered or under-instrumented areas

Solutions are tailored to your specific requirements and eligibility. Get a free consultation with our product managers and engineers to kick-start your project—contact us at hello@xenoss.io or request a private offer.

Related Products

How it works?

Search

Search 25000+ products and services vetted by AWS.

Request private offer

Our team will send you an offer link to view.

Purchase

Accept the offer in your AWS account, and start using the software.

Manage

All your transactions will be consolidated into one bill in AWS.

Create Your Marketplace with Webvar!

Launch your marketplace effortlessly with our solutions. Optimize sales processes and expand your reach with our platform.