ABB – ABB strengthens data center and industrial monitoring capabilities with IPEC acquisition

ABB

  • ABB enters an agreement to acquire IPEC, a technology company specializing in early detection of electrical equipment failures
  • Supports critical industries including data centers, utilities and airports where downtime costs millions
  • Integration of IPEC’s monitoring technology will complement ABB’s predictive maintenance service portfolio designed to cut downtime by up to 90 percent and maintenance costs by up to 85 percent

 

ABB today announced it has entered into an agreement to acquire IPEC, a UK-based technology company with more than 30 years of expertise in electrical diagnostics. IPEC’s advanced monitoring systems track critical electrical infrastructure around the clock, using AI and advanced analytics to predict failures that could result in multi-million-dollar losses, safety risks or extended outages for industries such as data centers, healthcare, utilities and manufacturing. The transaction is expected to close in the first quarter of 2026. Financial terms were not disclosed.

This acquisition reinforces ABB’s commitment to safeguarding operational resilience in the world’s most critical industries. Partial discharge activity – small electrical sparks that signal the early stages of failure of equipment insulation – is the leading cause of failure, responsible for more than 80% of asset breakdowns before an unexpected outage. IPEC specializes in detecting partial discharge, enabling businesses to identify problems before they escalate into costly downtime. The result is stronger, more reliable infrastructure that can withstand today’s energy and operational pressures. This expansion of ABB’s Electrification Service portfolio will contribute to supporting customers shift from reactive to proactive asset management that can reduce downtime by up to 90 percent, cutting maintenance costs by as much as 85 percent, and extend the life of critical infrastructure by decades.

Stuart Thompson, Division President, ABB Electrification Service, said: “Across critical industries, the cost of downtime is staggering, from multi-million-dollar revenue losses in data centers to the safety and reliability risks facing utilities and hospitals. This acquisition gives our customers the diagnostic intelligence they need to prevent failures before they happen. By turning complex monitoring data into clear, actionable insights, we’re enabling businesses to shift from reactive repairs to predictive maintenance, so they can focus on performance while their critical infrastructure runs leaner, cleaner, and smarter.”

Colin Smith (L), IPEC CEO and Richard Mahomed (R), Local Division Manager, Electrification Service, ABB UK

(1/2) Colin Smith (L), IPEC CEO and Richard Mahomed (R), Local Division Manager, Electrification Service, ABB UK

 

Colin Smith (L), IPEC CEO and Richard Mahomed (R), Local Division Manager, Electrification Service, ABB UK

(2/2) Colin Smith (L), IPEC CEO and Richard Mahomed (R), Local Division Manager, Electrification Service, ABB UK
 

 

IPEC is headquartered in Manchester, UK, with 70 employees across its operations in Oxford, Abu Dhabi, Sweden, Riyadh and Texas. The company has expanded from its UK utility base to serve customers globally, with data centers now representing its largest and fastest-growing market segment, particularly in the United States. IPEC’s monitoring platforms provide 24/7 monitoring of electrical infrastructure, with its flagship system capable of tracking up to 128 connection points simultaneously. IPEC’s proprietary DeCIFer algorithm analyses monitoring data to identify potential equipment issues before they escalate into failures, enabling businesses to schedule maintenance proactively rather than reactively.

Dr. Colin Smith, Managing Director of IPEC, said: “At IPEC, we’ve spent decades refining how partial discharge data can be translated into meaningful diagnostics through advanced algorithms and, more recently, AI and machine learning. By joining ABB, we can both continue to develop our technology and bring our innovations to more industries and markets, turning complex data into predictive insight that anticipates potential failures and enables industries to make more strategic, intelligent decisions about their electrical assets.” 

 

SourceABB

EMR Analysis

More information on ABB: See full profile on EMR Executive Services

More information on Morten Wierod (Chief Executive Officer and Member of the Group Executive Committee, ABB Ltd): See full profile on EMR Executive Services 

More information on Timo Ihamuotila (Chief Financial Officer, ABB till end of 2026 + Member of the Executive Committee, ABB till February 1, 2026): See full profile on EMR Executive Services

More information on Christian Nilsson (Chief Financial Officer, Electrification Business Area, ABB till February 1, 2026 + Chief Financial Officer and Member of the Executive Committee, ABB as from February 1, 2026): See full profile on EMR Executive Services

 

More information on Electrification Business Area by ABB: See the full profile on EMR Executive Services

More information on Giampiero Frisio (President, Electrification Business Area and Member of the Executive Committee, ABB): See full profile on EMR Executive Services

More information on Stuart Thompson (President, Electrification Service, Electrification Business Area, ABB): See full profile on EMR Executive Services

More information on Richard Mahomed (Local Division Manager, UK, Electrification Service, Electrification Business Area, ABB): See full profile on EMR Executive Services

 

 

More information on IPEC by ABB Electrification Service by Electrification Business Area by ABB: https://ipecuk.com/ + IPEC is based in Manchester in the UK. Our company offers turnkey solutions for asset monitoring and testing. Our products range from simple-to-use instruments for routine spot testing, to sophisticated permanently installed systems that give detailed information on the condition of insulation in key assets across transmission and distribution networks.

UK-based technology company with more than 30 years of expertise in electrical diagnostics. IPEC’s advanced monitoring systems track critical electrical infrastructure around the clock, using AI and advanced analytics to predict failures that could result in multi-million-dollar losses, safety risks or extended outages for industries such as data centers, healthcare, utilities and manufacturing. 

IPEC is headquartered in Manchester, UK, with 70 employees across its operations in Oxford, Abu Dhabi, Sweden, Riyadh and Texas. The company has expanded from its UK utility base to serve customers globally, with data centers now representing its largest and fastest-growing market segment, particularly in the United States. IPEC’s monitoring platforms provide 24/7 monitoring of electrical infrastructure, with its flagship system capable of tracking up to 128 connection points simultaneously. IPEC’s proprietary DeCIFer algorithm analyses monitoring data to identify potential equipment issues before they escalate into failures, enabling businesses to schedule maintenance proactively rather than reactively.

More information on Dr. Colin Smith (Managing Director, IPEC, ABB Electrification Service, Electrification Business Area, ABB): See full profile on EMR Executive Services

 

 

 

 

 

 

 

 

 

 

 

EMR Additional Notes:

  • Predictive Maintenance (PdM): 
    • Predictive maintenance (PdM) is a proactive maintenance strategy that uses real-time sensor data, historical information, and analytics to anticipate and prevent equipment failures before they occur.
    • By monitoring an asset’s actual condition through sensors and analyzing performance data, organizations can determine the optimal time for maintenance, thereby reducing unplanned downtime, extending equipment lifespan, and lowering maintenance costs.

 

 

  • AI – Artificial Intelligence:
    • Artificial intelligence is the simulation of human intelligence processes by machines, especially computer systems.
    • As the hype around AI has accelerated, vendors have been scrambling to promote how their products and services use AI. Often what they refer to as AI is simply one component of AI, such as machine learning. AI requires a foundation of specialized hardware and software for writing and training machine learning algorithms. No one programming language is synonymous with AI, but several, including Python, R and Java, are popular.
    • In general, AI systems work by ingesting large amounts of labeled training data, analyzing the data for correlations and patterns, and using these patterns to make predictions about future states. In this way, a chatbot that is fed examples of text chats can learn to produce lifelike exchanges with people, or an image recognition tool can learn to identify and describe objects in images by reviewing millions of examples.
    • AI programming focuses on three cognitive skills: learning, reasoning and self-correction.
    • The 4 types of artificial intelligence?
      • Type 1: Reactive machines. These AI systems have no memory and are task specific. An example is Deep Blue, the IBM chess program that beat Garry Kasparov in the 1990s. Deep Blue can identify pieces on the chessboard and make predictions, but because it has no memory, it cannot use past experiences to inform future ones.
      • Type 2: Limited memory. These AI systems have memory, so they can use past experiences to inform future decisions. Some of the decision-making functions in self-driving cars are designed this way.
      • Type 3: Theory of mind. Theory of mind is a psychology term. When applied to AI, it means that the system would have the social intelligence to understand emotions. This type of AI will be able to infer human intentions and predict behavior, a necessary skill for AI systems to become integral members of human teams.
      • Type 4: Self-awareness. In this category, AI systems have a sense of self, which gives them consciousness. Machines with self-awareness understand their own current state. This type of AI does not yet exist.
    • Machine Learning (ML):
      • Developed to mimic human intelligence, it lets the machines learn independently by ingesting vast amounts of data, statistics formulas and detecting patterns.
      • ML allows software applications to become more accurate at predicting outcomes without being explicitly programmed to do so.
      • ML algorithms use historical data as input to predict new output values.
      • Recommendation engines are a common use case for ML. Other uses include fraud detection, spam filtering, business process automation (BPA) and predictive maintenance.
      • Classical ML is often categorized by how an algorithm learns to become more accurate in its predictions. There are four basic approaches: supervised learning, unsupervised learning, semi-supervised learning and reinforcement learning.
    • Deep Learning (DL):
      • Subset of machine learning, Deep Learning enabled much smarter results than were originally possible with ML. Face recognition is a good example.
      • DL makes use of layers of information processing, each gradually learning more and more complex representations of data. The early layers may learn about colors, the next ones about shapes, the following about combinations of those shapes, and finally actual objects. DL demonstrated a breakthrough in object recognition.
      • DL is currently the most sophisticated AI architecture we have developed.
    • Generative AI (GenAI):
      • Generative AI technology generates outputs based on some kind of input – often a prompt supplied by a person. Some GenAI tools work in one medium, such as turning text inputs into text outputs, for example. With the public release of ChatGPT in late November 2022, the world at large was introduced to an AI app capable of creating text that sounded more authentic and less artificial than any previous generation of computer-crafted text.
    • Small Language Models (SLM) and Large Language Models (LLM):
      • Small Language Models (SLMs) are artificial intelligence (AI) models capable of processing, understanding and generating natural language content. As their name implies, SLMs are smaller in scale and scope than large language models (LLMs).
      • LLM means Large Language Models — a type of machine learning/deep learning model that can perform a variety of natural language processing (NLP) and analysis tasks, including translating, classifying, and generating text; answering questions in a conversational manner; and identifying data patterns.
      • For example, virtual assistants like Siri, Alexa, or Google Assistant use LLMs to process natural language queries and provide useful information or execute tasks such as setting reminders or controlling smart home devices.
    • Computer Vision (CV) / Vision AI & Machine Vision (MV):
      • Field of AI that enables computers to interpret and act on visual data (images, videos). It works by using deep learning models trained on large datasets to recognize patterns, objects, and context.
      • The most well-known case of this today is Google’s Translate, which can take an image of anything — from menus to signboards — and convert it into text that the program then translates into the user’s native language.
      • Machine Vision (MV) :
        • Specific application for industrial settings, relying on cameras to analyze tasks in manufacturing, quality control, and worker safety. The key difference is that CV is a broader field for extracting information from various visual inputs, while MV is more focused on specific industrial tasks.
        • Machine Vision is the ability of a computer to see; it employs one or more video cameras, analog-to-digital conversion and digital signal processing. The resulting data goes to a computer or robot controller. Machine Vision is similar in complexity to Voice Recognition.
        • MV uses the latest AI technologies to give industrial equipment the ability to see and analyze tasks in smart manufacturing, quality control, and worker safety.
    • Multimodal Intelligence and Agents:
      • Subset of artificial intelligence that integrates information from various modalities, such as text, images, audio, and video, to build more accurate and comprehensive AI models.
      • Multimodal capabilities allows AI to interact with users in a more natural and intuitive way. It can see, hear and speak, which means that users can provide input and receive responses in a variety of ways.
      • An AI agent is a computational entity designed to act independently. It performs specific tasks autonomously by making decisions based on its environment, inputs, and a predefined goal. What separates an AI agent from an AI model is the ability to act. There are many different kinds of agents such as reactive agents and proactive agents. Agents can also act in fixed and dynamic environments. Additionally, more sophisticated applications of agents involve utilizing agents to handle data in various formats, known as multimodal agents and deploying multiple agents to tackle complex problems.
    • Agentic AI:
      • Agentic AI is an artificial intelligence system that can accomplish a specific goal with limited supervision. It consists of AI agents—machine learning models that mimic human decision-making to solve problems in real time. In a multiagent system, each agent performs a specific subtask required to reach the goal and their efforts are coordinated through AI orchestration.
      • Unlike traditional AI models, which operate within predefined constraints and require human intervention, agentic AI exhibits autonomy, goal-driven behavior and adaptability. The term “agentic” refers to these models’ agency, or, their capacity to act independently and purposefully.
      • Agentic AI builds on generative AI (gen AI) techniques by using large language models (LLMs) to function in dynamic environments. While generative models focus on creating content based on learned patterns, agentic AI extends this capability by applying generative outputs toward specific goals.
    • Edge AI Technology:
      • Edge artificial intelligence refers to the deployment of AI algorithms and AI models directly on local edge devices such as sensors or Internet of Things (IoT) devices, which enables real-time data processing and analysis without constant reliance on cloud infrastructure.
      • Simply stated, edge AI, or “AI on the edge“, refers to the combination of edge computing and artificial intelligence to execute machine learning tasks directly on interconnected edge devices. Edge computing allows for data to be stored close to the device location, and AI algorithms enable the data to be processed right on the network edge, with or without an internet connection. This facilitates the processing of data within milliseconds, providing real-time feedback.
      • Self-driving cars, wearable devices, security cameras, and smart home appliances are among the technologies that leverage edge AI capabilities to promptly deliver users with real-time information when it is most essential.
    • High-Density AI: 
      • High-density AI refers to the concentration of AI computing power and storage within a compact physical space, often found in specialized data centers. This approach allows for increased computational capacity, faster training times, and the ability to handle complex simulations that would be impossible with traditional infrastructure.
    • Explainable AI (XAI) and Human-Centered Explainable AI (HCXAI): 
      • Explainable AI (XAI) refers to methods for making AI model decisions understandable to humans, focusing on how the AI works, whereas Human-Centered Explainable AI (HCXAI) goes further by contextualizing those explanations to a user’s specific task and understanding needs. While XAI aims for technical transparency of the model, HCXAI emphasizes the human context, emphasizing user relevance, and the broader implications of explanations, including fairness, trust, and ethical considerations.
    • Physical AI & Embodied AI: 
      • Physical AI refers to a branch of artificial intelligence that enables machines to perceive, understand, and interact with the physical world by directly processing data from a variety of sensors and actuators.
      • Physical AI provides the overarching framework for creating autonomous systems that act intelligently in real-world settings. Embodied AI, as a subset, focuses on the sensory, decision-making, and interaction capabilities that enable these systems to function effectively in dynamic and unpredictable environments.
    • Federated Learning and Reinforcement Learning:
      • Federated Learning is a machine-learning technique where data stays where it is, and only the learned model updates are shared. “Training AI without sharing your data”.
      • Reinforcement Learning is a type of AI where an agent learns by interacting with an environment and receiving rewards or penalties. “Learning by trial and error”
      • Federated Learning (FL) and Reinforcement Learning (RL) can be combined into a field called Federated Reinforcement Learning (FRL), where multiple agents learn collaboratively without sharing their raw data. In this approach, each agent trains its own RL policy locally and shares model updates, like parameters or gradients, with a central server. The server aggregates these updates to create a more robust, global model. FRL is used in applications like optimizing resource management in communication networks and enhancing the performance of autonomous systems by learning from diverse, distributed experiences while protecting privacy.

 

 

  • Partial Discharge (PM): 
    • Partial discharge (PD) is a localized electrical breakdown within a high-voltage insulation system, where the discharge doesn’t fully bridge the gap between conductors, but weakens the insulation over time, leading to potential failure of cables, transformers, and motors. It’s caused by defects or stress points, generating signals (electromagnetic, acoustic, chemical) that allow for early detection and predictive maintenance to prevent costly outages and catastrophic failures.