scholarly journals The Emerging Technological Revolution in Earth Observations

2020 ◽  
Vol 101 (3) ◽  
pp. E274-E285 ◽  
Author(s):  
Graeme Stephens ◽  
Anthony Freeman ◽  
Erik Richard ◽  
Peter Pilewskie ◽  
Philip Larkin ◽  
...  

Abstract A technology revolution in Earth observation sensor design is occurring. This revolution in part is associated with the emergence of CubeSat platforms that have forced a de facto standardization on the volume and power into which sensors have to fit. The extent that small sensors can indeed provide similar or replacement capabilities compared to larger and more expensive counterparts has barely been demonstrated and any loss of capability of smaller systems weighed against the gains in costs and new potential capabilities offered by implementing them with a more distributed observing strategy also has not yet been embraced. This paper provides four examples of observations made with prototype miniaturized observing systems, including from CubeSats, that offer a glimpse of this emerging sensor revolution and a hint at future observing system design.

2021 ◽  
Vol 13 (11) ◽  
pp. 2201
Author(s):  
Hanlin Ye ◽  
Huadong Guo ◽  
Guang Liu ◽  
Jinsong Ping ◽  
Lu Zhang ◽  
...  

Moon-based Earth observations have attracted significant attention across many large-scale phenomena. As the only natural satellite of the Earth, and having a stable lunar surface as well as a particular orbit, Moon-based Earth observations allow the Earth to be viewed as a single point. Furthermore, in contrast with artificial satellites, the varied inclination of Moon-based observations can improve angular samplings of specific locations on Earth. However, the potential for estimating the global outgoing longwave radiation (OLR) from the Earth with such a platform has not yet been fully explored. To evaluate the possibility of calculating OLR using specific Earth observation geometry, we constructed a model to estimate Moon-based OLR measurements and investigated the potential of a Moon-based platform to acquire the necessary data to estimate global mean OLR. The primary method of our study is the discretization of the observational scope into various elements and the consequent integration of the OLR of all elements. Our results indicate that a Moon-based platform is suitable for global sampling related to the calculation of global mean OLR. By separating the geometric and anisotropic factors from the measurement calculations, we ensured that measured values include the effects of the Moon-based Earth observation geometry and the anisotropy of the scenes in the observational scope. Although our results indicate that higher measured values can be achieved if the platform is located near the center of the lunar disk, a maximum difference between locations of approximately 9 × 10−4 W m−2 indicates that the effect of location is too small to remarkably improve observation performance of the platform. In conclusion, our analysis demonstrates that a Moon-based platform has the potential to provide continuous, adequate, and long-term data for estimating global mean OLR.


2007 ◽  
Vol 97 (1) ◽  
pp. 64-88 ◽  
Author(s):  
Andrew Atkeson ◽  
Patrick J Kehoe

Many view the period after the Second Industrial Revolution as a paradigm of a transition to a new economy following a technological revolution, including the Information Technology Revolution. We build a quantitative model of diffusion and growth during transitions to evaluate that view. With a learning process quantified by data on the life cycle of US manufacturing plants, the model accounts for the key features of the transition after the Second Industrial Revolution. But we find that features like those will occur in other transitions only if a large amount of knowledge about old technologies exists before the transition begins. (JEL L60, N61, N62, N71, N72, O33)


2020 ◽  
Vol 2020 ◽  
pp. 1-14
Author(s):  
Jinhui Li ◽  
Yunfeng Dong ◽  
Ming Xu ◽  
Hongjue Li

In this paper, a genetic programming method for satellite system design is proposed to simultaneously optimize the topology and parameters of a satellite system. Firstly, the representation of satellite system design is defined according to the tree structure. The genetic programming method is designed based on that representation. Secondly, according to the tree structure of different satellite schemes, different multiscale satellite models are established, in which various physical fields couple together. Then, an evaluation system is also proposed to test the performances of different satellite schemes. Finally, the application to the design of an earth observation satellite demonstrates the effectiveness of the proposed method.


Author(s):  
Nathalie Pettorelli

This chapter seeks to provide a quick introduction to satellite remote sensing. It starts with a set of definitions, thereby to explain the differences between Earth observations, remote sensing, and satellite remote sensing. It then goes on to describe how satellite remote sensing works, and what the differences between passive and active sensors are. An introduction to the main sensors currently on board active civilian Earth observation satellites is provided, together with details on their key specifications. The complex nature of satellite data, as well as the tools required to manipulate and analyse them are discussed. The chapter ends with a presentation of the main issues to be aware of when dealing with satellite data, and a look at the coming sensors and datasets that will soon expand opportunities for satellite data to inform environmental management.


Data ◽  
2019 ◽  
Vol 4 (3) ◽  
pp. 113 ◽  
Author(s):  
Gregory Giuliani ◽  
Joan Masó ◽  
Paolo Mazzetti ◽  
Stefano Nativi ◽  
Alaitz Zabala

Earth observations data cubes (EODCs) are a paradigm transforming the way users interact with large spatio-temporal Earth observation (EO) data. It enhances connections between data, applications and users facilitating management, access and use of analysis ready data (ARD). The ambition is allowing users to harness big EO data at a minimum cost and effort. This significant interest is illustrated by various implementations that exist. The novelty of the approach results in different innovative solutions and the lack of commonly agreed definition of EODC. Consequently, their interoperability has been recognized as a major challenge for the global change and Earth system science domains. The objective of this paper is preventing EODC from becoming silos of information; to present how interoperability can be enabled using widely-adopted geospatial standards; and to contribute to the debate of enhanced interoperability of EODC. We demonstrate how standards can be used, profiled and enriched to pave the way to increased interoperability of EODC and can help delivering and leveraging the power of EO data building, efficient discovery, access and processing services.


2019 ◽  
Vol 1 ◽  
pp. 1-2
Author(s):  
Kwangseob Kim ◽  
Kiwon Lee

<p><strong>Abstract.</strong> Data cube terms a multi-dimensional stack of gridded datasets aligned for analysis. Open Data Cube (ODC) is an open-source based information processing and managing platform on the viewpoint from web-based infrastructure. This open platform is for a large volume of geo-spatial information with geo-rectified coordinates, and it has been applied by non-profit international organizations such as the Committee on Earth Observation Satellites (CEOS) for an international coordination and management of space-borne missions, Global Earth Observation System of Systems (GEOSS) in the Group on Earth Observations (GEO), as an intergovernmental organization to improve the applicability, accessibility and usability of Earth observations for benefit of human society.</p><p>The building of Analysis Ready Data (ARD), which means the preparation of radiometric calibration and geo-rectification, is for the data cube utilization. The platform converts large-scale satellite image data into analytic information, providing functions for time series analysis. Internationally, there has been an ever-increasing number of country-based data cube deployments with freely available satellite images, including Australia Data Cube, Vietnam Data Cube, Swiss Data Cube, and Colombia Data Cube, as a computing environment for information distribution, sharing, and analysis.</p><p>However, there is no program yet to register Korea Multi-purpose satellite (KOMPSAT) optical and radar images on this platform, so this study developed the registering and ingestion script codes for KOMPSAT optical and radar image sets into ODC. Data ingestion is the process of obtaining and importing data for immediate use or storage in a database. Thus, an ingestion process is required to add satellite data to the ODC platform and the process can be divided into three main stages in Figure 1. First, it is to define the data type in the YAML format. Then, the indexing process of datasets for metadata registration is necessary. The next step is a data ingestion process that users can be used directly data sets collected in ODC.</p><p>Figure 2 shows some of the Python module results for index datasets and the process of metadata generation. The metadata YAML, which is required for indexing, has many advantages in many respects in the creation of metadata through Python modules. This is why we added Python modules to create metadata YAML. In particular, the KOMPSAT data ingestion process was designed so that all of them were possible through one module.</p><p>Using script modules for these steps, the functional accuracy was tested with actual satellite data. Color composite images using RGB bands of KOMPSAT optical images were generated in the ODC environment in Figure 3. In this process, image data formats of GeoTiff and netCDF are also supported.</p><p>In this study, consideration points for implementation of ODC applications are also discussed. KOMPSAT data is basically commercial-based products, unlike other freely accessible satellite images in the ODC applications. For the practical contribution for ODC-GEOSS, careful considerations for data policy are needed, because it can be applied as a reference model for other commercial satellite data for GEOSS.</p>


2021 ◽  
Vol 8 (2) ◽  
pp. 73
Author(s):  
Murshal Senjaya

The technological revolution for the Paperless Criminal Court Process is that in the development of evidence as regulated in the Criminal Procedure Code, it can no longer accommodate developments in information technology; this creates new problems. This problem causes the form of printed media to be shifted to digital media (paperless). This shift makes a significant change in crime using computers because evidence of a crime that will lead to a criminal event is in electronic data. Either on the computer itself (hard disk/floppy disc) or printed out or in another form in the form of a trace (path) of a computer user activity. The judge is not related to the correctness of conformity embodied on the instructions as evidence because electronic evidence cannot stand alone to prove the defendant's guilt. Therefore, it needs to be supported by other evidence.


Author(s):  
Holm Voigt

AbstractWater, energy and food are closely connected sectors which interact in a complex manner. Complex problems which need to be addressed in these sectors require informed decisions. The key to this information are data which need to be easily available to the decision maker. In the context of the Sustainability in the W-E-F Nexus conference May 19-20, 2014, the session on ‘Earth Observations, Monitoring and Modelling for the Sustainable Implementation of the Nexus Approach’ revealed institutional shortcomings and general problems in data provisioning for the water-energy- food (WEF) nexus. Key Findings of the session were that (1) integrative thinking of collaborating institutions is required to address problems in the water-energy-food nexus, (2) comprehensive and coherent data need to be made readily available, potentially through the Global Earth Observation System of Systems (GEOSS) and (3) that nexus education needs to be promoted in basic and higher education in order to ensure efficient use of coherent and comprehensive datasets.


2018 ◽  
Vol 1 (2) ◽  
pp. 229-242
Author(s):  
Simone Flavio Rafano Carnà ◽  
Riccardo Benvenuto ◽  
Charlotte Bewick ◽  
Frank Hennepe te

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