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미국
Expandable Variable-Autonomy Architecture Project
<p>Effective multi-level autonomous piloting systems require integration with safety-critical functions. The Expandable Variable-Autonomy Architecture&nbsp;(EVAA)&nbsp;project seeks to develop a hierarchal autonomous system framework that will depend on deterministic systems with higher authority to protect against catastrophic piloting faults and allow a lower level certification for the machine learning sub-systems. The multi-layered approach provides the framework for analytical systems that can learn, predict, and adapt to both routine and emergency situations.&nbsp;</p><p>The objective of the project is to develop an autonomous piloting system based on analytical and learning algorithms that are capable of making effective decisions, in both nominal and potentially catastrophic situations. This will develop a safety critical framework for certification of complex autonomous systems where a small but sufficient number of levels. The system will be integrated with a certified safety critical decision makers (such as vehicle health monitoring, collision avoidance, loss of control avoidance and restricts commands of higher level critical decision makers not certified to level A software. The project will integrate these systems onto a quad-rotor micro-UAV for inexpensive and quick flight testing of concepts and develop customized, low power hardware to house the control and decision making algorithms.</p><p>ASSUMPTIONS AND LIMITATIONS: The purpose of this CIF project is not to develop a full scale aircraft capable of these types of advancements, but only to develop a piloting system which make them possible. Initially, decisions associated with &ldquo;where to fly&rdquo; will be focused on and integrated into the algorithms. For this slice of the pie, the system will be required to navigate a potentially changing dense urban landscape. Routes will be planned based on time, distance, and potential risk. Additionally, terrain and obstacle avoidance algorithms will restrict these activities based on preloaded obstacle and terrain maps. Additionally, off nominal conditions such as loss of motor or other non-pre-programmed events will cause the aircraft to select landing or crashing locations based on population density maps, location of buildings, and other information. A hangar or small area will be turned into the urban city-center mockup with maps created of the mockup to facilitate flight test of concepts.</p><p><strong>Work to date: </strong>The hierarchical decision chain and framework, hardware, and embedded processing related to ground collision avoidance is in place for a sub-scale platform. Flight tests on a quad-rotor model helicopter demonstrated successful limitation of flight decisions when facing imminent ground collision.&nbsp;</p><p><strong>Looking ahead: </strong>The team is developing a full set of safety-critical functions for the sub-scale platforms and working to scale up to larger UAVs.&nbsp;</p><p><strong>Partners: </strong>University of California at Berkeley and Stanford University are developing algorithms, and the FAA is participating in the certification process.&nbsp;</p><p><strong>Benefits&nbsp;</strong></p><ul><li><strong>Increases safety: </strong>Integration of safety-critical functions improves outcomes in emergency situations.&nbsp;</li><li><strong>Certifiable: </strong>Removal of safety-critical functions from the autonomous control enables adaptable processes to be certified to a lower level.&nbsp;</li></ul><p><strong>Applications&nbsp;</strong></p><ul><li>UAVs and unmanned submersibles&nbsp;</li><li>Autonomous rail transport&nbsp;</li><li>Deep space exploration&nbsp;</li><li&g
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Advanced Exploration Systems Program
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AES consists of more than 35 projects that target high-priority capabilities needed for human exploration such as crew mobility, deep-space habitation, vehicle systems, robotics, deep-space operations, advanced life support, and extra-vehicular activity (EVA) systems. Early integration and testing of prototype systems will reduce risk and improve affordability of exploration mission elements. The prototype systems developed in the AES program are demonstrated in ground-based test beds, field tests, underwater tests, flight experiments on the International Space Station (ISS), and deep-space missions. In addition to developing building blocks for future missions, AES is exploring innovative ways to drive a rapid pace of progress, streamline project management, and use limited resources, the NASA workforce, and citizen innovators more effectively.

Enabling Nanosat Mobility and Autonomy for Small Bodies Exploration Project
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Develop control and planning algorithms for a science-driven spacecraft/rover hybrid, such that the rover is able to autonomously reach designated targets and point instruments traverse performance meets science objectives of 20-30% of traverse distance.

국토교통부 항공정비사 표준교재(헬리콥터)
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항공기 시스템이 디지털기반으로 변화되고, 종종 헬리콥터 사고가 발생함에 따라 헬리콥터와 항공전자·전기·계기(심화) 등 2종의 표준교재를 발간하게 되었습니다.
성남시청 - 자율주행차량 센서(Camera, Lidar, IMU, RTK GNSS, Chassis can) 고해상도 주행 데이터
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자율주행차량 chassis can 을 통해 얻어지는 steering angle, steering torq, speed 등의 정보를 기록한 데이터셋으로 자율주행 알고리즘 개발 등에 활용할 수 있다.
Safety Pilot Model Deployment Data
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This data were collected during the Safety Pilot Model Deployment (SPMD). The data sets that these entities will provide include basic safety messages (BSM), vehicle trajectories, and various driver-vehicle interaction data, as well as contextual data that describes the circumstances under which the Model Deployment data was collected. Large portion of the data contained in this environment is obtained from on board vehicle devices and roadside units. This legacy dataset was created before data.transportation.gov and is only currently available via the attached file(s). Please contact the dataset owner if there is a need for users to work with this data using the data.transportation.gov analysis features (online viewing, API, graphing, etc.) and the USDOT will consider modifying the dataset to fully integrate in data.transportation.gov.
Unmanned Aircraft Systems - Raw Photography
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'The USGS National Unmanned Aircraft Systems (UAS) Project Office utilizes UAS technology for collecting remote sensing data on a local scale. Typical UAS projects encompass areas that are too large to cover on foot and too small for traditional aircraft missions. The flexibility of operations and relative low cost of UAS allow scientists to support a range of activities including monitoring environmental conditions, analyzing the impacts of climate changes, responding to natural hazards, understanding landscape change rates and consequences, conducting fire assessments, tracking wildlife inventories, aiding search and rescue, and supporting related land management and emergency response missions. The USGS EROS Center manages and distributes data for the UAS Project Office. '
Unmanned Aircraft Systems - Digital Elevation Model
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'The USGS National Unmanned Aircraft Systems (UAS) Project Office utilizes UAS technology for collecting remote sensing data on a local scale. Typical UAS projects encompass areas that are too large to cover on foot and too small for traditional aircraft missions. The flexibility of operations and relative low cost of UAS allow scientists to support a range of activities including monitoring environmental conditions, analyzing the impacts of climate changes, responding to natural hazards, understanding landscape change rates and consequences, conducting fire assessments, tracking wildlife inventories, aiding search and rescue, and supporting related land management and emergency response missions. The USGS EROS Center manages and distributes data for the UAS Project Office. '
Test Data of Proof-of-Concept Vehicle Platooning Based on Cooperative Adaptive Cruise Control (CACC)
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The data represent the performance of a proof-of-concept vehicle platooning based on the Cooperative Adaptive Cruise Control (CACC) application. The Federal Highway Administration’s Turner Fairbank Highway Research Center (TFHRC), in conjunction with the Volpe National Transportation Systems Center, tested and evaluated this prototype system in 2016. Researchers in the Saxton Transportation Operations Laboratory at TFHRC designed and built the Cooperative Automated Research Mobility Applications (CARMA) platform version 1 that enables the implementation of the proof-of-concept CACC-based platooning in passenger vehicles equipped with production adaptive cruise control, and vehicle-to-vehicle communications using dedicated short-range communications (DSRC). The data characterize the state-of-the-art capability of the CACC application based on engineering tests that were performed on closed tracks by professional drivers and using prescribed test procedures. The test data are separated into sets that correspond to test date and time, and test run number. The data include performance parameters that were collected from the CACC application and data acquisition systems, including vehicle controller area network data, CARMA's MicroAutoBox, DSRC radios, and an independent measurement system. The tests were conducted at US Army’s Aberdeen Test Center located at Aberdeen Proving Grounds, MD. Further documentation can be found here: https://rosap.ntl.bts.gov/view/dot/1038.
Unmanned Aircraft Systems - Orthoimagery
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'The USGS National Unmanned Aircraft Systems (UAS) Project Office utilizes UAS technology for collecting remote sensing data on a local scale. Typical UAS projects encompass areas that are too large to cover on foot and too small for traditional aircraft missions. The flexibility of operations and relative low cost of UAS allow scientists to support a range of activities including monitoring environmental conditions, analyzing the impacts of climate changes, responding to natural hazards, understanding landscape change rates and consequences, conducting fire assessments, tracking wildlife inventories, aiding search and rescue, and supporting related land management and emergency response missions. The USGS EROS Center manages and distributes data for the UAS Project Office. '
한국교통안전공단 드론(초경량비행장치 중 무인비행장치) 사용사업체 운영현황
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항공사업법 제48조에 따라 초경량비행장치사용사업을 경영하려는 자는 국토교통부령으로 정하는 바에 따라 신청서에 사업계획서와 그 밖에 국토교통부령으로 정하는 서류를 첨부하여 국토교통부장관에게 등록하여야 한다. 그 중 무인비행장치인 드론을 활용한 사용사업체는 한국교통안전공단에 서류를 제출해야하며, 드론원스톱민원서비스(drone.onestop.go.kr)를 통해 등록 할 수 있다. 해당자료는 2025년8월기준 운영중인 시도기준 사용사업체 수 현황자료이다. 사업체는 사업범위를 촬영,농업지원,측량,점검,관측,조종교육,기타 중에 선택할 수 있고, 중복선택이 가능하다.