Home Knowledge Base Fuse Energy

Fuse Energy

No mentions found

This entity hasn't been tracked yet, or Iris is still building its knowledge base.

Related Articles from SNS

Adaptive Physics Transformer with Fused Global-Local Attention for Subsurface Energy Systems

arXiv:2602.11208v2 Announce Type: replace Abstract: The Earth's subsurface is a cornerstone of modern society, providing essential energy resources like hydrocarbons, geothermal, and minerals while serving as the primary reservoir for $CO_2$ sequestration. However, full physics numerical simulations of these systems are notoriously computationally expensive due to geological heterogeneity, high resolution requirements, and the tight coupling of physical processes with distinct propagation...

arXiv CS 9d ago

A natural chemistry laboratory in protostar shock waves

A natural chemistry laboratory in protostar shock waves Lisa Lock Scientific Editor Andrew Zinin Lead Editor Life exists because elements combine to form complex organic molecules. Astrochemistry studies this process, trying to understand how nature creates carbon-based molecules critical for life. One source for these types of molecules is the outflows emitted by protostars.

Phys.org 9d ago

UK households face 29-day deadline to 'avoid £221 charge'

UK households face 29-day deadline to 'avoid £221 charge' Millions of UK households could face a £221 rise Millions of households have just 29 days remaining to avoid a £221 surge in their yearly energy costs, as experts caution that the latest price cap rise takes effect from July 1. Energy comparison platform Uswitch warns that households on standard variable tariffs are facing an average annual increase of £221 when regulator Ofgem implements a 13% hike to the energy price cap next month....

Daily Mirror 8d ago

Autonomous heterogeneous catalyst discovery with a self-evolving multi-agent digital twin

arXiv:2606.05050v1 Announce Type: cross Abstract: Theoretical heterogeneous catalysis promises rapid catalyst discovery, yet computational and machine-learning predictions often deviate from experiment and stay confined to narrow material families, for want of a faithful, condition-aware catalytic simulator. We present CatDT (Catalysis Digital Twin), a self-evolving multi-agent system that builds an autonomous digital twin of a working catalyst, unifying gas-solid and liquid-solid modeling....

arXiv Physics 2d ago

Autonomous heterogeneous catalyst discovery with a self-evolving multi-agent digital twin

arXiv:2606.05050v1 Announce Type: cross Abstract: Theoretical heterogeneous catalysis promises rapid catalyst discovery, yet computational and machine-learning predictions often deviate from experiment and stay confined to narrow material families, for want of a faithful, condition-aware catalytic simulator. We present CatDT (Catalysis Digital Twin), a self-evolving multi-agent system that builds an autonomous digital twin of a working catalyst, unifying gas-solid and liquid-solid modeling....

arXiv CS 2d ago

Tiny Collaborative Inference for Occlusion-Robust Object Detection

arXiv:2606.02894v2 Announce Type: replace Abstract: Edge AI nodes for search and rescue are increasingly expected to run computer vision locally, yet ultra-low-end hardware imposes hard constraints on memory, compute, and inter-device communication. This work addresses occlusion-robust object detection on devices with less than 1 MB SRAM by combining an MCUNet backbone, a YOLOv2 detection head, and Lite quantisation. Two collaborative inference strategies are evaluated: feature-level fusion,...

arXiv CS 6d ago

Differentiable hybrid force fields support scalable autonomous electrolyte discovery

arXiv:2604.07979v2 Announce Type: replace-cross Abstract: Autonomous electrolyte discovery demands a computational engine that satisfies a critical trilemma: it must be fast enough for high-throughput screening, accurate enough for quantitative property prediction, and calibratable enough for online refinement. Classical empirical force fields (FFs) are fast but rely on error cancellation, while standard machine learning interatomic potentials (MLIPs) are computationally expensive. In this...

arXiv Physics 1d ago

Tiny Collaborative Inference for Occlusion-Robust Object Detection

Announce Type: new Abstract: Small edge devices such as IoT surveillance nodes and search-and-rescue (SAR) platforms are increasingly expected to run computer vision locally. On ultra-low-end hardware, however, object detection is limited by available memory and compute, by communication costs when several devices cooperate, and by the loss of accuracy caused by occlusion. The work evaluates occlusion-robust object detection on devices with less than 1 MB SRAM by combining an MCUNet...

arXiv CS 7d ago

HE^2: A Communication-Light Heterogeneous Architecture for Efficient Fully Homomorphic Encryption

arXiv:2605.31004v1 Announce Type: new Abstract: CKKS, an emerging fully homomorphic encryption (FHE) scheme, has been promising in privacy-preserving applications by enabling SIMD fixed-point computations on ciphertexts. Despite its strong security guarantees, CKKS involves both compute-intensive operators (ComOps) with high computational cost and memory-intensive operators (MemOps) with large memory footprints, making existing ASIC-based or NMP-based acceleration approaches suffer from high...

arXiv CS 9d ago

TwinQuant: Learnable Subspace Decomposition for 4-Bit LLM Quantization

arXiv:2606.01556v1 Announce Type: new Abstract: 4-bit quantization reduces the memory footprint and latency of large language model inference, but its aggressive precision reduction can severely degrade accuracy. Prior methods address this by decomposing each weight matrix into two components (e.g., via singular value decomposition) and quantizing them separately, assigning the bulk of values to a low-precision residual component while handling outliers with a high-precision low-rank...

arXiv CS 8d ago