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  "datePublished": "2026-04-08T08:11:00Z",
  "description": "NIMS Japan automates SEM and nanoindentation workflow, reducing aerospace alloy characterization time from 7 years to 13 days. 2,400 datasets across 220 conditions analyzed; SEM+automation replaces traditional tensile testing, enables high-throughput materials development.",
  "articleBody": "Automated SEM and nanoindentation at NIMS Japan: Accelerating alloy discovery\nLikely publishing date: 2026-04-07\n\nAutomated SEM and nanoindentation at NIMS Japan: Accelerating alloy discovery\n\nHow automated SEM workflows cut aerospace alloy testing from years to days\n\nWhat if you could condense years of materials testing into just 13 days? At the National Institute for Materials Science (NIMS) in Japan, researchers have done exactly that. By transforming a process that traditionally takes over seven years into an automated workflow, they are reshaping the development of aerospace materials.\n\nAt NIMS’s Research Center for Structural Materials (RCSM), a team led by Toshio Osada in the High-Reliability Heat-Resistant Materials Group developed an automated high-throughput evaluation system. Postdoctoral researcher Dr. Thomas Hoefler and colleagues created a method that dramatically accelerates the generation of process-structure-property datasets, critical for designing high-performance materials in aerospace, energy, and structural engineering.\n\nThe method builds on foundational ideas developed by Dr. Takahito Ohmura, Head of the RCSM, and Dr. Toshio Osada, who envisioned multi-indentation and automated SEM workflows to accelerate structural materials research.\n\nHigh-magnification SEM images of the approximately 1 µm indents are a key part of our method. There’s very little room for error in scan framing.\n\nHigh-throughput microscopy: From basic metrics to complete characterization\n\nAutomation fundamentally changed how the team approaches alloy characterization. Previously, analyses were limited to basic metrics like phase area fractions and mean precipitate diameters. Now, they evaluate precipitate shapes, inter-precipitate distances, and size distributions across temperature ranges.\n\nThe results speak for themselves: 2,400 data points correlating processing conditions, microstructure, and yield strength – gathered in just 13 days.\n\nTraditional tensile testing would take over 200 times longer.\n\nBeing able to set the sample for automatic SEM imaging on a Friday and review the data on Monday was a pivotal moment. It showed us the scale and depth of analysis we could achieve.\n\nWatch how the automated SEM and nanoindentation workflow operates in practiceCapturing thousands of data points in just daysThird-party Content BlockedThe video player is blocked due to your cookie preferences. To change the settings and play the video, please click the button below and consent to use of \"Functional\" tracking technologies.Change cookie preferencesAutomated quad-channel AsB for indent pileup topography\n\nWatch how the automated SEM and nanoindentation workflow operates in practice\n\nFour-channel Angular selective Backscatter (AsB) quad-mode image of an indent at 10 kV. The channels allow reconstructing 3D surface topography, which contains information on mechanical properties.\n\nSuperalloy microstructure before (top) and after (bottom) automatic image analysis. In-Lens, 1 kV.\n\nAutomated SEM analysis and nanoindentation of just one gradient-treated sample results in a complete Process-Structure-Properties dataset, containing information essential for structural materials.\n\nHigh‑throughput SEM and nanoindentation reveal structure and properties at scale\n\nThis automated workflow combines nanoindentation, SEM imaging, and image‑based analysis to produce a unified process–structure–property dataset from a single gradient‑treated specimen.\n\nMechanical response is captured through 3D topography of each indent, while γ′ precipitate size, shape, and fraction are derived from automated microstructure segmentation.\n\nAll results are linked through the same fully automated acquisition pipeline, enabling consistent high‑volume data generation for materials design.\n\nZEISS GeminiSEM 300 in operation, providing high‑resolution imaging and automated acquisition for advanced materials characterization.\n\nZEISS GeminiSEM 300: Advanced automation for materials science\n\nAt the heart of this workflow is ZEISS GeminiSEM 300. Its SmartSEM Remote API provides full access to SEM parameters and live scan images, enabling automated imaging routines and real-time optimization based on local microstructure.\n\nThe Inlens secondary electron detector delivers high-contrast and high-resolution images – even under challenging conditions. In the team’s superalloy samples, γ and γ′ phases are nearly identical in composition and structure. Typically, metallographic etching is required to distinguish them – but not here.\n\nThis capability allowed the team to replace much of their transmission electron microscopy (TEM) workflow with SEM, enabling automated imaging and precipitate size analysis – even for features just tens of nanometers in diameter.\n\nThe AsB detector adds another layer: it produces 3D topographic images in a single scan. This proved essential for pile-up analysis in nanoindentation inverse modeling – traditionally done using atomic force microscopy.\n\nThe complete freedom of access via the API offered by ZEISS is vital to our research.\n\nCollaborative development: From vision to publication\n\nIn 2021, Dr. Takahito Ohmura and Dr. Toshio Osada secured funding from Japan's ATLA* to develop multi-indentation combined with 3D SEM imaging. Dr. Ohmura procured ZEISS GeminiSEM 300 and automation infrastructure.\n\nNIMS collaborated with System in Frontier Inc. on the GUI development and with graduate student Eri Nakagawa on workflow testing. Within ZEISS, Dr. Etsuo Maeda contributed to the development of the machine‑learning–based image‑recognition algorithms. This successful work was supported by the National Security Technology Research Promotion Fund of the Acquisition, Technology & Logistics Agency.\n\nDr. Thomas Hoefler joined as postdoctoral researcher to lead version 2 development – refining workflows and integrating advanced image analysis. Electron microscopy facility manager Dr. Toru Hara provided essential infrastructure support, maintaining NIMS's long-standing ZEISS collaboration. Former member Takuma Kohata also contributed during the early development phases.\n\n*Acquisition, Technology & Logistics Agency in Japan, an organization under the Japanese Ministry of Defense\n\nProcess-structure-property datasets: Accelerating aerospace materials development\n\nFor NIMS, the impact is clear: a process that once took over seven years can now be completed in under two weeks – freeing up resources, accelerating discovery, and enabling more confident design decisions.The team’s method supports the development of improved predictive models for phase composition and mechanical properties – especially valuable in aerospace, where complex alloys and extreme temperatures challenge existing databases.In a study on the nickel-cobalt base superalloy TMP-5002, the system captured measurements at 220 different aging temperatures (647°C to 1,208°C), analyzing nearly one million individual γ′ precipitates. This enabled detailed coarsening kinetics analysis and application of advanced theoretical models with high confidence.\n\nSeeing the subtle changes in the precipitate size distribution shapes with processing conditions was memorable, made possible by the large number of precipitates imaged.\n\nFuture applications: Expanding automated characterization methods\n\nThe team is now exploring automated Energy Dispersive X-ray Spectroscopy (EDS) and Electron Backscatter Diffraction (EBSD) to include composition and crystallographic data. They’re also investigating in-situ SEM nanoindentation for high-temperature mechanical testing – critical for aerospace materials that must perform under extreme conditions.\n\nBy combining SEM imaging, nanoindentation, and open-source software, the team has built a scalable, high-throughput workflow that delivers consistent, highly correlated data. All analyses are performed on the same sample in a single session, eliminating environmental and operator-related variation – an advantage over traditional multi-sample studies.\n\nThe method is applicable to any engineering material accessible to SEM and nanoindentation, making it a powerful tool across the full spectrum of structural materials development.\n\nWe hope that wide adoption of high-throughput experimental methods will lead to improved databases for predicting equilibrium phase composition and mechanical properties. Even today, state-of-the-art commercial databases often fail to make reliable predictions for the complex alloys in actual use.\n\nDive into the complete methodology and results in this publication:Automated system for high-throughput process-structure-property dataset generation of structural materials: A γ\n\nγ′ superalloy case study, published in Materials & Design (2025), Volume 249, Article 114279\n\nThis work builds on earlier research by Dr. Ohmura and Dr. Osada, including the foundational study:High-throughput evaluation of stress–strain relationships in Ni–Co–Cr ternary systems via indentation testing of diffusion couples, published in Journal of Alloys and Compounds (2022), Volume 918, Article 165829\n\nLearn about the earlier research\n\nAbout the Research Center for Structural Materials\n\nThe Research Center for Structural Materials (RCSM) at NIMS Japan conducts research on structural materials with a focus on both material development and evaluation. The center’s current strategic plan emphasizes materials for extreme environments and advanced evaluation technologies for structural performance.Its team develops materials for conditions such as cryogenic temperatures, high heat, and seismic stress, and advances methods like multi-scale measurement and computational modeling to better understand material behavior.\n\nRCSM also supports collaboration across industry, academia, and government, and contributes to standardization and accident analysis in structural materials.\n\nHow to accelerate superalloy characterization and reduce development time?Automated high-throughput testing using gradient samples reduces characterization time by up to 200x. Instead of testing thousands of specimens, analyze a single sample with multiple processing conditions. NIMS generated 2,400 data points across 220 temperatures in 13 days – traditionally requiring over seven years – while eliminating sample-to-sample variation.\n\nHow to accelerate superalloy characterization and reduce development time?\n\nAutomated high-throughput testing using gradient samples reduces characterization time by up to 200x. Instead of testing thousands of specimens, analyze a single sample with multiple processing conditions. NIMS generated 2,400 data points across 220 temperatures in 13 days – traditionally requiring over seven years – while eliminating sample-to-sample variation.\n\nCan SEM and nanoindentation replace tensile testing for mechanical properties?Yes. Combining automated SEM imaging with nanoindentation inverse analysis calculates stress-strain curves from microscale indents(~1 µm), eliminating machined tensile specimens. NIMS generated 2,400 stress-strain curves in 13 days – 200x faster than traditional tensile testing – while correlating mechanical properties directly to microstructure at identical sample locations.\n\nCan SEM and nanoindentation replace tensile testing for mechanical properties?\n\nYes. Combining automated SEM imaging with nanoindentation inverse analysis calculates stress-strain curves from microscale indents(~1 µm), eliminating machined tensile specimens. NIMS generated 2,400 stress-strain curves in 13 days – 200x faster than traditional tensile testing – while correlating mechanical properties directly to microstructure at identical sample locations.\n\nWhat SEM features enable automated materials characterization?Open API access to microscope parameters and live scan images is essential. ZEISS GeminiSEM 360's SmartSEM Remote API enables full automation of imaging routines with real-time optimization. The InLens detector distinguishes phases without etching, while the four-channel AsB detector generates 3D topography in a single scan – critical for high-throughput analysis.\n\nWhat SEM features enable automated materials characterization?\n\nOpen API access to microscope parameters and live scan images is essential. ZEISS GeminiSEM 360's SmartSEM Remote API enables full automation of imaging routines with real-time optimization. The InLens detector distinguishes phases without etching, while the four-channel AsB detector generates 3D topography in a single scan – critical for high-throughput analysis.\n\nZEISS GeminiSEMFE-SEM for versatile, high-resolution imaging and characterization.\n\nFE-SEM for versatile, high-resolution imaging and characterization.\n\nImproving Nano-Structured Surfaces for Implants with Scanning Electron Microscopy\n\nNanoscience Innovation Driven by Collaboration and Technology at NGI Manchester\n\nGraphene Research and the Evolution of 2D Nano Materials: A Revolutionary Advancement in Science\n\n8 April 20266 minreadbyZEISS Microscopy\n\nPostdoctoral researcher, Research Center for Structural Materials (RCSM), National Institute for Materials Science (NIMS), Japan\n\nCapturing thousands of data points in just days\n\nFrom 3D indent topography to γ′‑microstructure maps and complete workflow integration\n\nIn BriefHow to accelerate superalloy characterization and reduce development time?Automated high-throughput testing using gradient samples reduces characterization time by up to 200x. Instead of testing thousands of specimens, analyze a single sample with multiple processing conditions. NIMS generated 2,400 data points across 220 temperatures in 13 days – traditionally requiring over seven years – while eliminating sample-to-sample variation.Can SEM and nanoindentation replace tensile testing for mechanical properties?Yes. Combining automated SEM imaging with nanoindentation inverse analysis calculates stress-strain curves from microscale indents(~1 µm), eliminating machined tensile specimens. NIMS generated 2,400 stress-strain curves in 13 days – 200x faster than traditional tensile testing – while correlating mechanical properties directly to microstructure at identical sample locations.What SEM features enable automated materials characterization?Open API access to microscope parameters and live scan images is essential. ZEISS GeminiSEM 360's SmartSEM Remote API enables full automation of imaging routines with real-time optimization. The InLens detector distinguishes phases without etching, while the four-channel AsB detector generates 3D topography in a single scan – critical for high-throughput analysis.\n\nDigital Solutions & Software Development\n\nSelect languageChoose the global website in your language to get the complete overview of ZEISS products.Global website (English)Site web international (Français)Internationale Website (Deutsch)Sitio web global (Español)グローバルウェブサイト（日本語）\n\nChoose the global website in your language to get the complete overview of ZEISS products.\n\nLegalContactPublisherLegal NoticePrivacy NoticeCookie NoticeCookie Preferences",
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