而在应用这种机器人显微钻时,该设备在接近这个组织交界面时可以自动检测钻头的进路。
Using the robotic micro-drill, the device is able to detect the approach of the drill tip as it approaches this tissue interface.
采用金相、扫描电镜、显微硬度及电子探针显微分析等手段对结合界面区域的组织结构、显微硬度变化及元素扩散进行了研究。
The structure, microhardness change and element change in the zone of bonding interface were studied by means of metallograph, SEM, microhardness and EPMA, etc.
用透射电子显微镜观察分析了增强体与基体合金界面的微观组织结构。
Also the microstructures at the interface of fiber and matrix were observed and analyzed through TEM.
元素在界面两侧的扩散是影响材料显微组织、表观硬度及界面结合强度的关键。
The interfacial diffusion of alloying element is an important factor to microstructure, apparent hardness and interfacial bond strength.
合金元素在界面两侧的扩散是影响材料显微组织、显微硬度及界面结合强度的关键。
The interfacial diffusion of alloying element is important to microstructure, microhardness and interfacial bonding strength.
分析了涂覆界面附近区域的显微组织形貌、相结构及化学成分,并对显微硬度和耐蚀性进行了测试。
The microstructure, phase structure and composition of the area near the coating interface were analyzed. The microhardness and corrosion resistance of the coating were also tested.
采用光学显微镜、扫描电子显微镜、能谱和X射线衍射仪分析了梯度材料各层及界面微观组织、相组成和元素分布。
The microstructure and phase composition of each layer as well as component distribution of elements across the interfaces of the layers were analyzed by means of OM, SEM, EDS and XRD.
利用扫描电镜、能谱仪、X射线衍射等法对熔 覆合金层、合金 层与 钢基体的结合界面等进行了显微组织及相结构的分析。
The microstructure and phase constitution of the coat and the boundary between coat and substrate were studied with SEM, EDX and X-ray analysis techniques.
在致密化加工过程中 ,材料的密度和力学性能明显提高 ,沉积坯中的界面和孔洞明显愈合 ,材料的显微组织趋于均匀。
With the densification, material density and mechanical properties are promoted distinctly, the boundaries and cavities in the deposits are welded and the microstructure reaches even.
利用金相显微镜及扫描电镜对重熔合金层及结合界面组织进行了观察。
The microstructure of the coating and the boundary between the coating and substrate were studied by SEM.
利用金相显微镜及扫描电镜对重熔合金层及结合界面组织进行了观察。
The microstructure of the coating and the boundary between the coating and substrate were studied by SEM.
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