Urja Daily
No Result
View All Result
  • News
  • Renewable
    • Solar
    • Rooftop
    • Floating Solar
    • Module
    • Wind
    • Hydrogen
    • Biomass
    • Tenders
    • Sustainibility
  • Storage
  • E-Mobility
  • Battery
  • Smart City
  • Power
    • Smart Grid
    • Microgrid
    • Off-Grid
  • Editor’s Pick
    • Articles
    • In Talks
    • E-MAG
    • Market Research
  • On-demand Webinars
  • More
    • Events
    • Contact Us
    • Subscribe
  • News
  • Renewable
    • Solar
    • Rooftop
    • Floating Solar
    • Module
    • Wind
    • Hydrogen
    • Biomass
    • Tenders
    • Sustainibility
  • Storage
  • E-Mobility
  • Battery
  • Smart City
  • Power
    • Smart Grid
    • Microgrid
    • Off-Grid
  • Editor’s Pick
    • Articles
    • In Talks
    • E-MAG
    • Market Research
  • On-demand Webinars
  • More
    • Events
    • Contact Us
    • Subscribe
No Result
View All Result
Urja Daily
No Result
View All Result
Home E-Mobility

Fujitsu Achieves High-Precision Molecular Dynamics Simulation for All-Solid-State Battery Interphases

New neural network potential training method for atomic-level interface structure analysis

Palak by Palak
December 3, 2025
in E-Mobility
Reading Time: 4 mins read
0
Fujitsu
Share on FacebookShare on TwitterShare on Linkedin

KAWASAKI, Japan – Fujitsu today announced the successful development of a technology for molecular dynamics (MD) simulation that enables atomic-level structural analysis of the solid electrolyte interphase (SEI) [1] formation process in all-solid-state batteries. This process, previously difficult to analyze, significantly impacts battery performance. Fujitsu achieved this breakthrough by developing a neural network potential (NNP) [2] training method using knowledge distillation [3], enabling stable, long-duration MD simulations. The newly developed technology can now rapidly and accurately reproduce the behavior of all-solid-state battery electrolyte membrane and electrode interface structures [4] with over 100,000 atoms for 10 nanoseconds, requiring only one week of computation.  

The innovative nature of this technology has been recognized with the Electric Science and Technology Promotion Award for 2025 from The Promotion Foundation of Electrical Science and Engineering, which was awarded on November 25, 2025.

RELATED POSTS

Servotech Secures BEE 5-star Rating for 60 kW & 120 kW DC EV Chargers

VNT Strengthens Focus on High-Power EV Charging for Fleet Electrification

By linking these technologies, Fujitsu aims to establish a new materials development workflow that accelerates materials development through AI and create new materials together with its customers.
Fujitsu will add this technology into its materials chemistry calculation platform SCIGRESS and begin providing it to customers by March 2026.

Overview

Fujitsu developed a knowledge distillation technique (Figure 1) to precisely train NNPs with a faster multi-layer perceptron (MLP) [7] architecture. This is achieved by transferring knowledge from computationally slower, but knowledge-rich, GNN-based published NNPs. This approach allows MLP-based NNPs to leverage extensive published NNP knowledge and specialized material structure insights, enabling stable, high-speed, long-duration MD simulations for large-scale systems exceeding 100,000 atoms.

Results

When applied to a next-generation all-solid-state battery interface (127,296 atoms), Fujitsu confirmed stable, 10-nanosecond MD simulations in approximately one week (Figure 2(b)). This enabled structural analysis of the SEI, critical for battery performance and previously unachievable with existing MD simulations. SEI defines the charge-discharge cycle life and safety of all-solid-state batteries, and understanding its atomic-level formation and stability is crucial. This technology is expected to accelerate the development of a method to control SEI formation by elucidating its previously unknown atomic-level processes.

Background

NNP-based MD simulations have recently gained traction for rapidly and accurately simulating material properties at the atomic level. Published NNPs, trained on millions of diverse material data points, are increasingly utilized.
However, material structure collapse during simulation has been an ongoing key challenge with published NNP-based MD simulations, especially for complex materials like all-solid-state batteries. Furthermore, many published NNPs, trained on extensive datasets, employ graph neural networks (GNNs) [6]. While expressive, GNNs are computationally slow, taking over a year for long-duration simulations of large-scale systems exceeding 100,000 atoms, rendering them impractical. This new technology attempts to address these challenges.

[1] Solid electrolyte interphase (SEI):
A very thin passive layer formed at the interface between the electrode and solid electrolyte in all-solid-state batteries. It is formed by the initial reaction between the electrode and electrolyte and the deposition of decomposition products during charge-discharge cycles. It requires high lithium-ion conductivity and electronic insulation. It significantly affects the charge-discharge cycle life and safety of batteries.
[2] Neural network potential (NNP):
A model that constructs a function (potential) representing interatomic interactions using a neural network, a type of machine learning. By learning high-precision calculation results from first-principles calculations (e.g., DFT), it can calculate atomic energies and forces for large atomic systems with accuracy close to first-principles calculations, but at a much higher speed.
[3] Knowledge distillation:
A model training technique in machine learning. It transfers knowledge from a large, complex model (teacher model) to a more compact and faster model (student model). By learning the output (soft targets) of the teacher model, the student model can improve computational efficiency while maintaining the teacher model’s performance.
[4] Interface structure:
In physics and chemistry, this refers to the arrangement of atoms and molecules, electronic states, and interactions in the boundary region where two different phases (e.g., solid and solid, liquid and solid) meet. In batteries, it refers to the microscopic structure of the region where the electrode and electrolyte are in contact.
[5] Graph neural network (GNN):
A neural network that directly processes graph-structured data (composed of nodes and edges). It learns node features and edge relationships, demonstrating high expressiveness in analyzing data with graph structures, such as materials and molecules.
[6] Multi-layer perceptron (MLP):
One of the most basic neural network structures. It consists of an input layer, hidden layers, and an output layer, where each layer combines the outputs of the previous layer and propagates them to the next.

Fujitsu’s Commitment to the Sustainable Development Goals (SDGs)

The Sustainable Development Goals (SDGs) adopted by the United Nations in 2015 represent a set of common goals to be achieved worldwide by 2030.Fujitsu’s purpose – “to make the world more sustainable by building trust in society through innovation” – is a promise to contribute to the vision of a better future empowered by the SDGs.

Tags: AIBatteryelectric vehicleFujitsuSEITechnology
ShareTweetShare
Palak

Palak

Related Posts

EV Charging

Servotech Secures BEE 5-star Rating for 60 kW & 120 kW DC EV Chargers

by Palak
June 25, 2026
0

New Delhi : Servotech Renewable Power System Ltd. secured the 5-Star rating from the Bureau of Energy Efficiency (BEE) for...

EV Mines

VNT Strengthens Focus on High-Power EV Charging for Fleet Electrification

by Palak
June 19, 2026
0

Gurgaon, India – As rising fuel costs, sustainability goals, and government-led electrification initiatives continue to reshape the transportation sector, the demand...

Robotaxi

What a Southeast Asian Robotaxi Deal Reveals About Mobility’s Future

by Palak
June 18, 2026
0

Hanoi, Vietnam - A new robotaxi partnership involving VinFast highlights four major shifts transforming the automotive industry, from software-defined vehicles...

EVs VinFast

How EVs Like VinFast’s are Designed to Take on Rainy Season Driving?

by Palak
June 13, 2026
0

Gurugram, Haryana, India - As India's monsoon season begins, concerns about EV safety often resurface. Here's why electric vehicles like...

- Mitsubishi Electric Building Solutions Corporation

153 elevators and escalators delivered for the New Taipei Metro Sanying Line in Taiwan

by Palak
June 10, 2026
0

TOKYO - Mitsubishi Electric Building Solutions Corporation (MEBS, Head Office: Chiyoda-ku, Tokyo; President: Iwao Oda) today announced that Taiwan Mitsubishi Elevator Co.,...

Next Post
Paper Production Capacity

Paper Production Capacity to Reach 32 Million Tons by 2030: MoS Shripad Naik

Zypp Electric

Zypp Electric Launches FleetEase.ai: AI-Powered Fleet Management for India's EV and Logistics Growth

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

RECOMMENDED

Evaluating Circular Economy Potential A Global Bio-CNG Market Research

Evaluating Circular Economy Potential: A Global Bio-CNG Market Research Report 2033 Analysis

June 26, 2026
Digital twin

How the Digital Twin in Energy Market Leverages IIoT for Real Time Efficiency and Emission Controls?

June 26, 2026

MOST VIEWED

  • Solar

    When the Sun Began Paying the Electricity Bills: The Story of PM Surya Ghar Muft Bijli Yojana

    0 shares
    Share 0 Tweet 0
  • India’s Emerging Polysilicon Manufacturing Ecosystem: Opportunities and Challenges

    0 shares
    Share 0 Tweet 0
  • KP Group & PP Savani University Launches Urjanoor Scholarship

    0 shares
    Share 0 Tweet 0
  • Xpeng Selects u‑blox F9 Centimeter-level Multi-Band GNSS Technology for P7 Smart EV

    0 shares
    Share 0 Tweet 0
  • How proper refurbishment can extend life of pre-owned bikes in India?

    0 shares
    Share 0 Tweet 0

Evaluating Circular Economy Potential: A Global Bio-CNG Market Research Report 2033 Analysis

How the Digital Twin in Energy Market Leverages IIoT for Real Time Efficiency and Emission Controls?

IBM, Red Hat and Palo Alto Networks Expand Project Lightwell

European Battery Business Club [EBBC] Training Platform

CEAD and Comau Transform Manufacturing with Large-Format Additive Production

Fraunhofer TechFlash: FastDry Wall-Drying Technology & European Battery Business Training Platform

Latest Magazine

© 2016 – 2025 TechZone Print Media | All Rights Reserved

  • About Us
  • Contact Us
No Result
View All Result
  • News
  • Renewable
    • Solar
    • Rooftop
    • Floating Solar
    • Module
    • Wind
    • Hydrogen
    • Biomass
    • Tenders
    • Sustainibility
  • Storage
  • E-Mobility
  • Battery
  • Smart City
  • Power
    • Smart Grid
    • Microgrid
    • Off-Grid
  • Editor’s Pick
    • Articles
    • In Talks
    • E-MAG
    • Market Research
  • On-demand Webinars
  • More
    • Events
    • Contact Us
    • Subscribe

© 2016 - 2025 TechZone Print Media | All Rights Reserved