无人行星际探测智能钻取芯技术

IF 1.6 Q3 GEOSCIENCES, MULTIDISCIPLINARY Scientific Drilling Pub Date : 2018-10-31 DOI:10.5772/INTECHOPEN.75712
Junyue Tang, Q. Quan, Shengyuan Jiang, Jieneng Liang, Z. Deng
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引用次数: 0

摘要

机器人技术,特别是能够自主完成许多危险和不确定任务的智能机器人技术,在行星探测中得到了广泛应用。与地面采矿类似,在登陆行星或建造行星建筑之前,应首先进行钻孔和取芯活动,以调查原位地质信息。考虑到无人机器人的技术优势,利用自主钻井工具获取行星土壤样本可能是最可靠和最具成本效益的解决方案。然而,由于无人钻井取心活动存在着一些独特的挑战,如长距离的时间延迟、不确定的钻井地层、有限的传感器资源等,提高系统对复杂地质地层的适应性确实有必要进行研究。考虑钻具功耗和土壤取心形态等因素,提出了一种钻孔取心特性在线监测方法,探索适合不同地层的钻孔参数。同时,应用模式识别技术对不同类型的潜在土壤或岩石进行分类,建立了可钻性分类模型,以准确识别当前的钻井地层。将合适的钻井参数与已知的可钻性水平相结合,最终建立了闭环钻井策略,可用于未来的行星际勘探。
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Intelligent Drilling and Coring Technologies for Unmanned Interplanetary Exploration
The robotic technology, especially the intelligent robotics that can autonomously conduct numerous dangerous and uncertain tasks, has been widely applied to planetary explorations. Similar to terrestrial mining, before landing on planets or building planetary constructions, a drilling and coring activity should be first conducted to investigate the in-situ geological information. Given the technical advantages of unmanned robotics, utilizing an autonomous drill tool to acquire the planetary soil sample may be the most reliable and cost-effective solution. However, due to several unique challenges existed in unmanned drilling and coring activities, such as long-distance time delay, uncertain drilling formations, limited sensor resources, etc., it is indeed necessary to conduct researches to improve system’s adaptability to the complicated geological formations. Taking drill tool’s power consumption and soil’s coring morphology into account, this chapter proposed a drilling and coring characteristics online monitoring method to investigate suitable drilling parameters for different formations. Meanwhile, by apply - ing pattern recognition techniques to classify different types of potential soil or rocks, a drillability classification model is built accurately to identify the current drilling forma - tion. By combining suitable drilling parameters with the recognized drillability levels, a closed-loop drilling strategy is established finally, which can be applied to future inter - planetary exploration.
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来源期刊
Scientific Drilling
Scientific Drilling GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
2.50
自引率
0.00%
发文量
12
审稿时长
27 weeks
期刊最新文献
Drilling into a deep buried valley (ICDP DOVE): a 252 m long sediment succession from a glacial overdeepening in northwestern Switzerland Coring tools have an effect on lithification and physical properties of marine carbonate sediments Initial results of coring at Prees, Cheshire Basin, UK (ICDP JET project): towards an integrated stratigraphy, timescale, and Earth system understanding for the Early Jurassic Workshop on drilling the Nicaraguan lakes: bridging continents and oceans (NICA-BRIDGE) Poor Man's Line Scan – a simple tool for the acquisition of high-resolution, undistorted drill core photos
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