Remote Sensing Open Access Journal of MDPI: Current Progress and Future Vision

A comparison of various remote sensing, geoscience, and Geographic Information Systems (GIS) international journals is provided in Table 1 [...]

Note: A = Journal Impact Factor: Number of times all the articles that are published in the last two years (i.e., 2017 and 2018) in a journal are cited this year (i.e., 2019) by any journal in the JCR database divided by the total number of articles published. B = Eigenfactor score: The Eigenfactor Score calculation is based on the number of times articles from the journal published in the past five years have been cited in the JCR year (2019), but it also considers which journals have contributed these citations so that highly cited journals will influence the network more than lesser cited journals. References from one article in a journal to another article from the same journal are removed, so that Eigenfactor Scores are not influenced by journal self-citation. C = Normalized Eigenfactor: The Normalized Eigenfactor Score is the Eigenfactor score normalized, by rescaling the total number of journals in the JCR (2019) each year, so that the average journal has a score of 1. Journals can then be compared and influence measured by their score relative to 1. For example, Remote Sensing Journal of MDPI which has a normalized eigenfactor of 8.1265, means that the journal is 8.1265 times as influencial as the average journal in the Journal Citation Report (JRC). D = Article Influence Score: Measures the average influence per article of the papers published in the journal over the first five years after publication. Green color highlight indicates the rank 1 for each performance parameter. Credits for the definitions A,B,C,D above: References [1][2][3][4].
Remote Sens. 2020, 12, 2442 3 of 9 For the normalized Eigenfactor score, an average journal has a value of 1. A normalized Eigenfactor score of 8.1265 for Remote Sensing OAJ means that the journal is 8.1265 times as influential as the average journal in the JRC year (2019). The two next best performing journals after Remote Sensing in Eigenfactor and normalized Eigenfactor measures are Remote Sensing of Environment (0.05724, 6.984) and IEE Transactions of Geoscience and Remote Sensing (0.04926, 6.0106).
The Eigenfactor score and the normalized Eigenfactor score increase with the number of articles published in a year.
The article influence score measures the average influence per article of the papers published in the journal over the first five years after publication [1]. The difference is that the Eigenfactor score measures the total influence of a journal, and the Article Influence Score takes into account the size of the journal [1]. The IEEE Geoscience and Remote Sensing Magazine has the highest article influence score of 2.996 of all remote sensing journals. Many journals publish very few articles, but each article has a higher article influence score. For example, in 2019, IEEE Geoscience and Remote Sensing Magazine had a total citation number of 1304, which is just 2.07% of the citations of Remote Sensing of Environment (62,697 citations), 2.8% of the citations of IEEE Transactions of Geoscience and Remote Sensing (46,565 citations), and 3.61% of the citations of Remote Sensing OAJ of MDPI (36,083 citations). So, when a journal is extremely selective and publishes only very high impact articles, many parameters like the Journal Impact Factor and Article Influence Score go up swiftly.
In terms of total citations (Table 1) during 2019, the three leading journals were Remote Sensing of Environment (62,697), IEEE Transactions on Geoscience and Remote Sensing (46,565), and Remote Sensing (36,083). In this regard, Remote Sensing OAJ of MDPI increased its citations by 12,516 in 2019 (36,083) compared to 2018 (23,567). This is the highest increase in the number of citations in a single year by any journal (Table 1). The Eigenfactor score and the normalized Eigenfactor score increase with the number of articles published in a year.

Remote Sensing Open Access Journal Publications
The article influence score measures the average influence per article of the papers published in the journal over the first five years after publication [1]. The difference is that the Eigenfactor score measures the total influence of a journal, and the Article Influence Score takes into account the size of the journal [1]. The IEEE Geoscience and Remote Sensing Magazine has the highest article influence score of 2.996 of all remote sensing journals. Many journals publish very few articles, but each article has a higher article influence score. For example, in 2019, IEEE Geoscience and Remote Sensing Magazine had a total citation number of 1304, which is just 2.07% of the citations of Remote Sensing of Environment (62,697 citations), 2.8% of the citations of IEEE Transactions of Geoscience and Remote Sensing (46,565 citations), and 3.61% of the citations of Remote Sensing OAJ of MDPI (36,083 citations). So, when a journal is extremely selective and publishes only very high impact articles, many parameters like the Journal Impact Factor and Article Influence Score go up swiftly.
In terms of total citations (Table 1) during 2019, the three leading journals were Remote Sensing of Environment (62,697), IEEE Transactions on Geoscience and Remote Sensing (46,565), and Remote Sensing (36,083). In this regard, Remote Sensing OAJ of MDPI increased its citations by 12,516 in 2019 (36,083) compared to 2018 (23,567). This is the highest increase in the number of citations in a single year by any journal (Table 1).    Authors originated from 118 countries/regions. Figure 4 shows the top 10 countries/territories based on the percentage of author distribution, including China, the USA, Germany, Italy, the UK, Spain, France, Canada, Australia, and the Netherlands. China is at the top of the list, at about 45.32%, followed by the USA at 23.53%.  Authors originated from 118 countries/regions. Figure 4 shows the top 10 countries/territories based on the percentage of author distribution, including China, the USA, Germany, Italy, the UK, Spain, France, Canada, Australia, and the Netherlands. China is at the top of the list, at about 45.32%, followed by the USA at 23.53%. Authors originated from 118 countries/regions. Figure 4 shows the top 10 countries/territories based on the percentage of author distribution, including China, the USA, Germany, Italy, the UK, Spain, France, Canada, Australia, and the Netherlands. China is at the top of the list, at about 45.32%, followed by the USA at 23.53%.

Remote Sensing Open Access Journal Publications
Remote Sens. 2020, 12, x FOR PEER REVIEW 5 of 10

Publication Time
As shown in Figure 5, the average publication time (APT, 44.4 days), median publication time (MPT, 42 days), and time from submission to first decision (TFD, 20 days) in 2019 were much shorter, so that innovative studies were published without delay, which helped with the dissemination of research.

Publication Time
As shown in Figure 5, the average publication time (APT, 44.4 days), median publication time (MPT, 42 days), and time from submission to first decision (TFD, 20 days) in 2019 were much shorter, so that innovative studies were published without delay, which helped with the dissemination of research.

Publication Time
As shown in Figure 5, the average publication time (APT, 44.4 days), median publication time (MPT, 42 days), and time from submission to first decision (TFD, 20 days) in 2019 were much shorter, so that innovative studies were published without delay, which helped with the dissemination of research.

Special Issue (SI)
In 2019, 451 SIs were set up, an increase of 45.95% compared with 2018 ( Figure 6). Moreover, Figure 6 shows that the publication rate for SIs in 2019 was 71.02%, keeping a similar rate as 2018, as SIs were still the main sources of publications. All SIs can be accessed at https://www.mdpi.com/journal/remotesensing/special_issues. Inviting top researchers to edit Special Issues has been very productive and has attracted a large number of researchers looking to publish their research in a top-quality journal expeditiously.

Special Issue (SI)
In 2019, 451 SIs were set up, an increase of 45.95% compared with 2018 ( Figure 6). Moreover, Figure 6 shows that the publication rate for SIs in 2019 was 71.02%, keeping a similar rate as 2018, as SIs were still the main sources of publications. All SIs can be accessed at https://www.mdpi.com/journal/ remotesensing/special_issues. Inviting top researchers to edit Special Issues has been very productive and has attracted a large number of researchers looking to publish their research in a top-quality journal expeditiously. The best five SIs that closed in 2019 are listed in Table 2:

SI Title Guest Editors Publication
Advances The best five SIs that closed in 2019 are listed in Table 2:

Editorial Board
In 2019, five new sections were set up and five new Section Editors-in-Chief (SEiCs) joined us, including Dr. Magaly Koch for the Section "Environmental Remote Sensing", Prof. Stuart Phinn for "Coral Reef Remote Sensing", Prof. Mattia Crespi for "Engineering Remote Sensing", Dr. Vincenzo Levizzani for "Remote Sensing of the Water Cycle", and Dr. Deepak R. Mishra for "Remote Sensing Letter". Moreover, Prof. Gerrit de Leeuw and Dr. Jorge Vazquez took over from Dr. Richard Müller and Dr. Xiaofeng Li as new SEiCs for "Atmosphere Remote Sensing" and "Ocean Remote Sensing", respectively.
In addition, 27 new Associate Editors were promoted and the number of Editorial Board Members increased from 280 to 605 in 2019 (Table 3). We also created two new positions in 2019, Topic Editor and Reviewer Board Member. The 17 Topic Editors were on board to help propose and manage new Special Issues, and also to promote our journal at various conferences. Furthermore, 1107 Reviewer Board Members joined our team to help provide high-quality reviews.

Competition Analysis
Among all the 30 journals under the category "Remote Sensing" (https://jcr.incites.thomsonreuters. com), the Impact Factor of Remote Sensing OAJ of MDPI (4.509) ranks 9th, Q2 (Figure 7). Compared to the top five journals, the main competitive advantages of Remote Sensing OAJ of MDPI are shorter publication time, a lower article processing charge, and rich experience in the open-access field.

Competition Analysis
Among all the 30 journals under the category "Remote Sensing" (https://jcr.incites.thomsonreuters.com), the Impact Factor of Remote Sensing OAJ of MDPI (4.509) ranks 9th, Q2 (Figure 7). Compared to the top five journals, the main competitive advantages of Remote Sensing OAJ of MDPI are shorter publication time, a lower article processing charge, and rich experience in the open-access field.

A Bibliographic analysis of Remote Sensing Open Access Journal of MDPI
A detailed bibliometric profile of the Remote Sensing Open Access Journal Published by MDPI between 2009 and 2018 is provided by Drs. Zhang, Thenkabail and Wang [5].

Current Achievements and the Way Forward
Remote Sensing Open Access Journal (OAJ) of MDPI was the first open access journal in remote sensing that began publishing in the year 2009. It published about 100 articles per year then, but now publishes above 3000 articles per year, the highest by any remote sensing international journal. It is now a well-recognized and respected international journal of repute in remote sensing, where the very best scientists in the subject from around the world publish regularly. In 2019, 8381 articles were submitted, but only 36% of them were published, which indicates a very high interest in publishing in the journal, but at the same time, there is a critical review process where a large number (64%) of the articles were rejected either at submission or during the peer-review process. Maintaining an impact factor of 4.509 with such a high number of publications is itself a testament to the quality of the articles published. Remote Sensing Open Access Journal of MDPI can easily further increase its impact factor swiftly, if 20-30% of the lesser ranked articles are not published. However, this creates a problem where very good articles are rejected solely based on novelty or unfounded, and often biased, subjective criticism of the value of the article. The journal follows a rigorous peer-review process involving two or more reviewers (most often three or more reviewers) followed by single or multi-tiered editorial scrutiny. Typically, multiple rounds of reviews and editorial scrutiny are involved.
Remote Sensing OAJ of MDPI is now a well-recognized leading open access journal that allows free downloads of the articles from anywhere in the world with simple internet access. Its review is fast with a median of 45 days from submission to publishing. It has rich set of articles, as evidenced by the journal performance parameters in Table 1. These articles are written by some of the best researchers on the subject from around the world. In 2019, articles originated from 118 countries. Nearly 70% for these articles came from China and the USA, followed by European countries (Germany, Italy, the UK, Spain, France, the Netherlands), Canada, and Australia. Remote Sensing OAJ provides readers and authors statistics on each article, such as the number of downloads and number of citations. Remote Sensing OAJ ranks #1 amongst all remote sensing journals in terms of Eigenfactor scores (0.06661) and normalized Eigenfactor scores (8.1265). It increased its citations by 12,516 in 2019 (36,083) compared to 2018 (23,567), the highest increase in the year by any Remote Sensing Journal.

A Bibliographic analysis of Remote Sensing Open Access Journal of MDPI
A detailed bibliometric profile of the Remote Sensing Open Access Journal Published by MDPI between 2009 and 2018 is provided by Drs. Zhang, Thenkabail and Wang [5].

Current Achievements and the Way Forward
Remote Sensing Open Access Journal (OAJ) of MDPI was the first open access journal in remote sensing that began publishing in the year 2009. It published about 100 articles per year then, but now publishes above 3000 articles per year, the highest by any remote sensing international journal. It is now a well-recognized and respected international journal of repute in remote sensing, where the very best scientists in the subject from around the world publish regularly. In 2019, 8381 articles were submitted, but only 36% of them were published, which indicates a very high interest in publishing in the journal, but at the same time, there is a critical review process where a large number (64%) of the articles were rejected either at submission or during the peer-review process. Maintaining an impact factor of 4.509 with such a high number of publications is itself a testament to the quality of the articles published. Remote Sensing Open Access Journal of MDPI can easily further increase its impact factor swiftly, if 20-30% of the lesser ranked articles are not published. However, this creates a problem where very good articles are rejected solely based on novelty or unfounded, and often biased, subjective criticism of the value of the article. The journal follows a rigorous peer-review process involving two or more reviewers (most often three or more reviewers) followed by single or multi-tiered editorial scrutiny. Typically, multiple rounds of reviews and editorial scrutiny are involved.
Remote Sensing OAJ of MDPI is now a well-recognized leading open access journal that allows free downloads of the articles from anywhere in the world with simple internet access. Its review is fast with a median of 45 days from submission to publishing. It has rich set of articles, as evidenced by the journal performance parameters in Table 1. These articles are written by some of the best researchers on the subject from around the world. In 2019, articles originated from 118 countries. Nearly 70% for these articles came from China and the USA, followed by European countries (Germany, Italy, the UK, Spain, France, the Netherlands), Canada, and Australia. Remote Sensing OAJ provides readers and authors statistics on each article, such as the number of downloads and number of citations. Remote Sensing OAJ ranks #1 amongst all remote sensing journals in terms of Eigenfactor scores (0.06661) and normalized Eigenfactor scores (8.1265). It increased its citations by 12,516 in 2019 (36,083) compared to 2018 (23,567), the highest increase in the year by any Remote Sensing Journal. Remote Sensing of Environment Remote Sens. 2020, 12, 2442 9 of 9 with 62,697 citations, and IEEE Transactions on Geoscience and Remote Sensing with 46,565 citations rank above Remote Sensing OAJ in 2019.
There is a clear "paradigm-shift" in how remote sensing science is conducted in the last few years with swift advances in big-data analytics, machine learning, deep learning, artificial intelligence, cloud computing, and Application Programming Interfaces (APIs). Analysis Ready Data (ARD) and reference training and validation data Hubs in support of creating knowledge-base to train machine\deep learning algorithms and validation of the products further help in speed and accuracy of production of myriad remotely sensed data derived science applications. A whole new world of smallsats and CubeSats are revolutionizing how remote sensing data is acquired, processed, and made available to users. As a result of all these endeavors, remote sensing data user base and its applications are expanding exponentially and has led to quantum leap in productivity and speed of research. Combination of these factors are expected to further increase remote sensing data derived science publications and applications in the coming years.
Going forward, our goal remains to publish cutting-edge impactful research of importance and value to scientists and the public, research that enhances our knowledge or fills a missing gap in knowledge, and applied science of practical value in remote sensing and related sciences.
Funding: This research received no external funding.