ProcessMetaverse™

ProcessMetaverse™

ProcessMetaverse™ is an industrial SaaS solution designed for online digital twin

ProcessMetaverse™ would enable:

Faster online deployment over traditional solutions

Reduced costs for digital twin model maintenance

Improved user experience, efficiency and flexibility

Industrial SaaS Solution Designed for Online Digital Twins

Solution Highlights:

Process Canvas™

An infinite canvas for integrating and analyzing industrial big data and digital twin metadata, empowered by various widgets & apps, advanced visualization and AI-driven insights

Digital Twin Model Manager

A user-friendly simulation widget for configuring first-principles process models (e.g., Aspen) to enable real-time representation (so-called “mirror-model”), real-time optimization, and short or long-term predictions

Python Editor

A user-friendly python widget for real-time creation and utilization of ML-based data models, enhancing process insights and optimization

Process Agent™

A generative AI-powered copilot that optimizes intelligent workflows, driving operational efficiency and productivity through advanced assistance and automated solutions

Process Canvas™

Core Features and Capabilities:

An infinite, interactive canvas workspace (so-called “Layout”) within the PMv solution, designed to integrate, analyze, and visualize industrial big data and digital twin metadata

Revolutionizing the readability of complex industrial data, it delivers insights quickly to users while providing a foundation for running simulation-based and ML-driven digital twin models using real-time data

Enables collaborative workflows with easy sharing and customizable layouts

Digital Twin Model Manager

Core Features and Capabilities:

Supports a range of Aspen engineering software as online digital twin models, including Aspen Plus, Aspen Plus Dynamics, Aspen Custom Modeler, HYSYS, and HYSYS Dynamics

Instantiates online executable digital twin models that seamlessly integrate with live process data, delivering accurate and dynamic representations of process operations at real-time

User-friendly interface for configuring and updating digital twin  models, and flexible data management for quick adjustments and iterative testing

Enables what-if scenario testing to predict outcomes under various operational conditions, starting from the current real-time conditions

Python Editor

Core Features and Capabilities:

Real-time, online deployment of reinforcement learning ML models using live sensor data or a combination of sensor data and Aspen digital twin metadata for advanced process optimization and decision-making

Seamless integration and reuse of existing Python-based machine learning models

Simplifies the creation of customized models tailored to specific user needs with minimal effort

Process Agent™ (Gen-AI Copilot)

Core Features and Capabilities:

Provides context-aware assistance, generating tailored recommendations using real-time process data and historical insights

Automates detailed process reports, model summaries, and operational insights with precision and consistency

This powerful AI companion not only enhances the usability of the PMv solution but also drives value by making industrial processes smarter, more efficient, and more adaptive to change

Applicable Areas

Core Features and Capabilities:

ProcessMetaverse™ (PMv) is particularly well-suited for processes that involve repetitive production and monitoring

It excels in industries where simulation tools, such as Aspen modeling software, have already proven effective

Going beyond existing solutions, PMv delivers exceptional value in industries where process efficiency is impacted by variability, such as raw material variability and seasonal or daily weather changes

With its powerful online monitoring, prediction and optimization capabilities at real-time, PMv ensures reliable and efficient operations, even in dynamic and VUCA (volatile, uncertain, complex, and ambiguous) environments

Applicable Areas

By industry classification:

Optimizing complex reaction and separation processes (e.g., catalytic reactions, distillation processes)

Improving process and energy efficiencies through the optimal management of large-scale heat exchanger networks, such as refinery preheat trains

Dynamic monitoring and optimization of batch and continuous bioprocesses, including fermentation, cell culture, and downstream purification steps

Contact us today to learn more!