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  1. Book ; Online: Photo-physics of Hybrid Metal Halide Perovskite Semiconductor Thin Films

    Singh, Shivam

    Application in Photovoltaic

    2023  

    Abstract: This thesis demonstrates the photo-physics of hybrid metal halide perovskite semiconductor thin films and its application to solar cells. ... Comment: PhD ... ...

    Abstract This thesis demonstrates the photo-physics of hybrid metal halide perovskite semiconductor thin films and its application to solar cells.

    Comment: PhD thesis
    Keywords Physics - Applied Physics ; Condensed Matter - Materials Science
    Publishing date 2023-02-19
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  2. Article ; Online: Novel Bottom-Side Polished PCF-Based Plasmonic Biosensor for Early Detection of Hazardous Cancerous Cells.

    Singh, Shivam / Prajapati, Yogendra Kumar

    IEEE transactions on nanobioscience

    2023  Volume 22, Issue 3, Page(s) 647–654

    Abstract: This work presents a single-core bowl-shaped bottom-side polished (BSP) photonic crystal fiber (PCF) sensor based on surface plasmon resonance (SPR) concept for the early detection of hazardous cancer cells in human blood, skin, cervical, breast, and ... ...

    Abstract This work presents a single-core bowl-shaped bottom-side polished (BSP) photonic crystal fiber (PCF) sensor based on surface plasmon resonance (SPR) concept for the early detection of hazardous cancer cells in human blood, skin, cervical, breast, and adrenal glands. We have studied liquid samples of cancer-affected and healthy samples with their concentrations/refractive indices in the sensing medium. To induce a plasmonic effect in the PCF sensor, the bottom flat section of a silica PCF fiber is coated with a 40nm plasmonic material, such as gold. To strengthen this effect, a thin TiO
    MeSH term(s) Humans ; Female ; Gold ; Metal Nanoparticles ; Early Detection of Cancer ; Uterine Cervical Neoplasms/diagnosis ; Surface Plasmon Resonance
    Chemical Substances Gold (7440-57-5)
    Language English
    Publishing date 2023-06-29
    Publishing country United States
    Document type Journal Article
    ISSN 1558-2639
    ISSN (online) 1558-2639
    DOI 10.1109/TNB.2023.3233990
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Article ; Online: Study of Intrachain Charge Transfer in a Blue Emissive Polyfluorene Random Copolymer.

    Sardar, Gopa / Biswas, Abhinav / Singh, Shivam / Kabra, Dinesh

    The journal of physical chemistry. B

    2024  Volume 128, Issue 14, Page(s) 3521–3526

    Abstract: Photophysics of a blue light-emitting fluorescent random copolymer, consisting of arylated polydioctylfluorene (aryl-F8), polydioctylfluorene (F8), and amine comonomers in a ratio of 80:15:5 is reported. In a solution of ... ...

    Abstract Photophysics of a blue light-emitting fluorescent random copolymer, consisting of arylated polydioctylfluorene (aryl-F8), polydioctylfluorene (F8), and amine comonomers in a ratio of 80:15:5 is reported. In a solution of 10
    Language English
    Publishing date 2024-03-28
    Publishing country United States
    Document type Journal Article
    ISSN 1520-5207
    ISSN (online) 1520-5207
    DOI 10.1021/acs.jpcb.4c00767
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  4. Article ; Online: Enhancing climate resilience in businesses: The role of artificial intelligence

    Singh, Shivam / Goyal, Manish Kumar

    Journal of Cleaner Production. 2023 Sept., v. 418 p.138228-

    2023  

    Abstract: The abrupt rise in extreme weather events (floods, heat waves, droughts, etc.) due to changing climate in the last decades has increased the level of threats to various sectors (agriculture, energy, transportation, etc.) globally. The climate projections ...

    Abstract The abrupt rise in extreme weather events (floods, heat waves, droughts, etc.) due to changing climate in the last decades has increased the level of threats to various sectors (agriculture, energy, transportation, etc.) globally. The climate projections from global circulation models indicate even more intense and frequent extreme events in the future, which in turn pose more risks to socioeconomic infrastructure. The enhanced understanding of the climate-related financial risk associated with businesses has driven efforts to include critical information on probable risks associated with climate change in financial decision-making. In this study, we have presented a framework to assess the need of incorporating climate risk assessment as an integral part of business operations. We also reviewed revealed literature to understand the possible impacts of climate change on various sectors and presented key strategies to assess the climate risk associated with them. Also, a framework incorporating probable climate threats to business ecology with principles of robustness, resourcefulness, redundancy, and rapidity has been proposed to adapt and mitigate associated risks for a climate-resilient business ecosystem. The integration of Artificial Intelligence in managing risk could be a promising tool for enhancing business resilience to climate change and could be used as a tool. Robust and accurate predictions of climate and weather extremes from deep learning algorithms at a significant lead time can help in minimizing the associated risk with a business infrastructure. Atmospheric Rivers (ARs), a weather extreme cause huge socioeconomic risk by triggering floods and droughts in various continents of mid-latitude regions. We have presented a case study investigating the ability of deep learning algorithms to predict ARs. The results from the analysis advocate the application of deep learning algorithms to predict weather and climate extremes in decision support systems to enhance the climate resilience of a business ecosystem.
    Keywords artificial intelligence ; case studies ; climate ; climate change ; decision making ; ecosystems ; energy ; heat ; infrastructure ; latitude ; risk ; risk assessment ; transportation ; weather ; Business ; Resilience ; Atmospheric rivers
    Language English
    Dates of publication 2023-09
    Publishing place Elsevier Ltd
    Document type Article ; Online
    ISSN 0959-6526
    DOI 10.1016/j.jclepro.2023.138228
    Database NAL-Catalogue (AGRICOLA)

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  5. Article ; Online: An innovative approach to predict atmospheric rivers: Exploring convolutional autoencoder

    Singh, Shivam / Goyal, Manish Kumar

    Atmospheric Research. 2023 July, v. 289 p.106754-

    2023  

    Abstract: Atmospheric rivers (ARs) are filamentary regions of high moisture content in mid-latitude regions through which most of the poleward moisture is being transported. These ARs carry a huge amount of water in the form of vapor and thus landfalling of these ... ...

    Abstract Atmospheric rivers (ARs) are filamentary regions of high moisture content in mid-latitude regions through which most of the poleward moisture is being transported. These ARs carry a huge amount of water in the form of vapor and thus landfalling of these ARs may bring either a beneficial supply of water or may create hazardous flood situations and thus cause damage to life and property. These regions have been statistically characterized as intense integrated water vapor transport (IVT) regions in the troposphere based on various thresholds of magnitude, direction, and geometry. To enhance the knowledge of data-driven methods for modelling nonlinear atmospheric dynamics associated with ARs, a first ever study with data-driven methodology incorporating a Deep Learning architecture, Autoencoder has been proposed. While training the proposed model, the Adam optimizer was used to reduce the mean squared error loss and was optimized using the Rectified Linear Unit (ReLU) and Sigmoid activation functions. The prediction results of the availability of ARs at next frames by the Autoencoder were assessed by popularly used performance evaluation metrics structural similarity index metrics (SSMI), mean squared error (MSE), root mean squared error (RMSE), and peak signal to noise ratio (PSNR). We have got comparatively higher scores (average) of SSIM (0.739) and PSNR (64.422) and lower scores (average) of RMSE (0.155) and MSE (0.0247) for AR prediction from our model which signifies the accuracy of the proposed Autoencoder in capturing AR dynamics. The findings of the study could be useful in giving important insights to incorporate Deep Learning models for forecasting ARs at significant lead time and consequently reducing the risk and increasing the resilience of AR flood prone regions.
    Keywords geometry ; latitude ; models ; prediction ; research ; signal-to-noise ratio ; troposphere ; water content ; water vapor ; Atmospheric rivers ; Deep learning ; Autoencoder ; Floods ; Integrated water vapor transport ; Machine learning
    Language English
    Dates of publication 2023-07
    Publishing place Elsevier B.V.
    Document type Article ; Online
    Note Pre-press version
    ISSN 0169-8095
    DOI 10.1016/j.atmosres.2023.106754
    Database NAL-Catalogue (AGRICOLA)

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  6. Article: Late presentation of Swyer syndrome: A case report.

    Pathak, Swasti / Raj, Gaurav / Pratap, Rishabh / Singh, Shivam

    Radiology case reports

    2023  Volume 18, Issue 9, Page(s) 3295–3298

    Abstract: Swyer syndrome-a rare syndrome associated with complete gonadal dysgenesis-is seen in phenotypically female patients with 46-XY karyotype. They usually present with primary amenorrhea or delayed puberty. The dysgenetic gonad, which is nonfunctional, is ... ...

    Abstract Swyer syndrome-a rare syndrome associated with complete gonadal dysgenesis-is seen in phenotypically female patients with 46-XY karyotype. They usually present with primary amenorrhea or delayed puberty. The dysgenetic gonad, which is nonfunctional, is prone to undergo malignant transformation such as dysgerminoma, gonadoblastoma, etc. Timely diagnosis helps in deciding appropriate management strategies for the patient such as hormone replacement therapy and gonadectomy. Thirty-year-old patient with a female external phenotype presented to us with complaints of primary amenorrhea. There was no similar family history of infertility, amenorrhea, abnormal external genitalia development, or cryptorchidism. On physical examination, the breast development of the patient was within normal limits for her age (Tanner stage 5), however; the axillary and pubic hair were underdeveloped (Tanner stage 2). Pelvic and inguinal ultrasound of the patient showed a hypoplastic uterus along with a cystic structure in left pelvis with no evidence of any testes like structure in inguinal region, pelvis, or abdomen. The patient was further evaluated with MRI of pelvis which confirmed the ultrasound findings of a hypoplastic uterus along with a dysplastic cystic left gonad with no evidence of any ovary or ovary-like structure/testes/testes-like structure in abdomen. Possibility of complete gonadal dysgenesis was given which was further confirmed by the hormonal assay that showed hypergonadotropic-hypogonadism with raised serum follicular stimulating hormone (FSH) and serum luteinizing hormone (LH) levels and a low estradiol, low testosterone, and low anti-Mullerian hormone (AMH) levels. Serum prolactin (PRL), serum thyroid stimulating hormone (TSH), and serum beta human chorionic gonadotropin (beta hCG) levels were within normal range. The cytogenetic report of the patient showed a 46-XY karyotype confirming our diagnosis. The patient was advised to undergo prophylactic gonadectomy for the left gonad. Swyer syndrome is a rare disorder of sexual development which needs vigorous clinical, laboratory, and radiological evaluation. Ultrasound is the primary investigation of choice whereas MRI is used as a problem-solving tool in localizing the streak gonads. Early diagnosis is crucial in these patients since prophylactic gonadectomy reduces the risk of developing germ cell tumor.
    Language English
    Publishing date 2023-07-12
    Publishing country Netherlands
    Document type Case Reports
    ZDB-ID 2406300-9
    ISSN 1930-0433
    ISSN 1930-0433
    DOI 10.1016/j.radcr.2023.06.061
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  7. Article ; Online: Heat waves characteristics intensification across Indian smart cities.

    Goyal, Manish Kumar / Singh, Shivam / Jain, Vijay

    Scientific reports

    2023  Volume 13, Issue 1, Page(s) 14786

    Abstract: Indian cities have frequently observed intense and severe heat waves for the last few years. It will be primarily due to a significant increase in the variation in heat wave characteristics like duration, frequency, and intensity across the urban regions ...

    Abstract Indian cities have frequently observed intense and severe heat waves for the last few years. It will be primarily due to a significant increase in the variation in heat wave characteristics like duration, frequency, and intensity across the urban regions of India. This study will determine the impact of future climate scenarios like SSP 245 and 585 over the heat wave characteristics. It will present the comparison between heat waves characteristics in the historical time (1981 to 2020) with future projections, i.e., D
    Language English
    Publishing date 2023-09-07
    Publishing country England
    Document type Journal Article
    ZDB-ID 2615211-3
    ISSN 2045-2322 ; 2045-2322
    ISSN (online) 2045-2322
    ISSN 2045-2322
    DOI 10.1038/s41598-023-41968-8
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  8. Article ; Online: Characterizing the spatio-temporal distribution, detection, and prediction of aerosol atmospheric rivers on a global scale.

    Rautela, Kuldeep Singh / Singh, Shivam / Goyal, Manish Kumar

    Journal of environmental management

    2023  Volume 351, Page(s) 119675

    Abstract: Aerosol Atmospheric Rivers (AARs) are elongated and narrow regions that carry high concentrations of aerosols (tiny particles suspended in the atmosphere) across large distances, exerting effects on both air quality and human health (Chakraborty et al., ... ...

    Abstract Aerosol Atmospheric Rivers (AARs) are elongated and narrow regions that carry high concentrations of aerosols (tiny particles suspended in the atmosphere) across large distances, exerting effects on both air quality and human health (Chakraborty et al., 2021, 2022). Monitoring and modeling these aerosols present distinct challenges due to their dynamic nature and complex interactions within the atmosphere. In this context, the present study detects and predicts the AARs using MERRA-2 reanalysis datasets with their seasonal climatology of key aerosol species, including Black Carbon (BC), Dust (DU), Organic Carbon (OC), Sea Salt (SS), and Sulphates (SU). The study employs an innovative Integrated Aerosol Transport (IAT) based AAR algorithm from 2015 to 2022. A total count of 44,020 BC AARs, 13,280 DU AARs, 21,599 OC AARs, 17,925 SS AARs, and 31,437 SU AARs were detected globally. The seasonal climatology of BC and OC AARs intensifies in areas such as the Amazon rainforest and Congo during AMJJAS (April-September) due to forest fires. Similarly, DU AARs are more frequent in regions near the Saharan desert, primarily around the equator during AMJJAS. SS AARs tend to predominate over the oceans, while SU AARs are predominantly found in the northern hemisphere, primarily due to higher anthropogenic emissions. Furthermore, convolutional autoencoder-based models were developed for key aerosol species, strengthening predictive accuracy by effectively capturing complex data relationships and delivering precise predictions for the last 5-time frames. During validation, the model evaluation parameters for image prediction such as the Structural Similarity Index ranged from 0.86 to 0.94, Peak Signal-to-Noise Ratio fluctuated between 1.14 and 42.25 dB, Root Mean Square Error varied from 2.39 to 296.4 mg/(m-sec), and Mean Square Error fell within the range of 1.55-17.22 mg/(m-sec). These collectively reflect image closeness, quality, dissimilarity, and accuracy in AAR prediction. This study demonstrates the effectiveness of advanced machine and deep learning models in predicting AARs, offering the potential for advanced forecasting and enhancing resilience in high-aerosol concentration regions.
    MeSH term(s) Aerosols/analysis ; Air Pollutants/analysis ; Air Pollution/analysis ; Carbon/analysis ; Dust/analysis ; Environmental Monitoring/methods ; Seasons ; Soot
    Chemical Substances Aerosols ; Air Pollutants ; Carbon (7440-44-0) ; Dust ; Soot
    Language English
    Publishing date 2023-12-03
    Publishing country England
    Document type Journal Article
    ZDB-ID 184882-3
    ISSN 1095-8630 ; 0301-4797
    ISSN (online) 1095-8630
    ISSN 0301-4797
    DOI 10.1016/j.jenvman.2023.119675
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  9. Article ; Online: Role of large-scale climate oscillations in precipitation extremes associated with atmospheric rivers: nonstationary framework

    Singh, Shivam / Goyal, Manish Kumar / Jha, Srinidhi

    Hydrological Sciences Journal. 2023 Feb. 17, v. 68, no. 3 p.395-411

    2023  

    Abstract: Atmospheric rivers (ARs) are filamentary regions of high-water vapour flux in the lower troposphere that contribute significantly to poleward moisture movement in mid-latitude regions. Key characteristics (frequency, duration, and intensity) of ARs have ... ...

    Abstract Atmospheric rivers (ARs) are filamentary regions of high-water vapour flux in the lower troposphere that contribute significantly to poleward moisture movement in mid-latitude regions. Key characteristics (frequency, duration, and intensity) of ARs have been explored to recognize the regions vulnerable to AR-flood. To investigate the association of ARs with large-scale climate oscillations (LSCOs), precipitation extremes (PEs) maximum 1-day precipitation (Rx1day), maximum consecutive 5-day precipitation (Rx5day), precipitation amount from very wet days (R95pTOT) are explored in a non-stationary framework of generalized extreme value distribution, taking the Arctic Oscillation, North Atlantic Oscillation, El Niño Southern Oscillation, and Pacific Decadal Oscillation (PDO) as covariates. In almost 30% of regions around the globe, May-June-July-August-September (MJJAS) season PDO was found to be the relatively most influential covariate for capturing PEs. The west coast of North America and of Europe, southernmost South America, central East Asia, New Zealand, and Australia have been identified as the most critical regions associated with AR linked with PE-associated LSCOs.
    Keywords El Nino ; North Atlantic Oscillation ; climate ; coasts ; hydrology ; latitude ; troposphere ; vapors ; Arctic region ; Australia ; East Asia ; Europe ; New Zealand ; North America ; South America ; atmospheric rivers ; large-scale climate oscillations ; nonstationary ; integrated water vapour transport ; precipitation extremes
    Language English
    Dates of publication 2023-0217
    Size p. 395-411.
    Publishing place Taylor & Francis
    Document type Article ; Online
    ISSN 2150-3435
    DOI 10.1080/02626667.2022.2159412
    Database NAL-Catalogue (AGRICOLA)

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  10. Article ; Online: Sedimentation analysis for a reservoir using remote sensing and GIS techniques

    Singh, Shivam / Prasad, Bikram / Tiwari, H. L.

    ISH Journal of Hydraulic Engineering. 2023 Jan. 01, v. 29, no. 1 p.71-79

    2023  

    Abstract: Water storage structures raised on the rivers are subjected to sedimentation. The sedimentation is caused by deposition of eroded sediment particles carried by the streams just behind a dam in a reservoir. In this study, we carried out loss in live ... ...

    Abstract Water storage structures raised on the rivers are subjected to sedimentation. The sedimentation is caused by deposition of eroded sediment particles carried by the streams just behind a dam in a reservoir. In this study, we carried out loss in live storage capacity of Samrat Ashok Sagar Reservoir, Vidisha, Madhya Pradesh, India due to sedimentation using satellite imageries with various combinations of color bands (green, red, blue, near infrared, etc.) and on the basis of degree of reflectance and absorption of particular wavelengths of light. Normalized difference water index (NDWI) derived through the combination of green and NIR bands images have been used to calculate the water spread at various elevations by creating false color composites (FCC). Seven dates of IRS-(R2/P6) L-3 satellite images covering live storage of reservoir in elevation as per the field records collected from the reservoir site have been analyzed using ArcGIS. The resulted sedimentation in the live storage of the reservoir is approximately 46.48 Mm³ for the span of 20 years (1997–2017). The rate of sedimentation in Samrat Ashok Sagar Reservoir is 2.324 Mm³/ year or 0.9% per year. Reservoir silting rate has also been compared with empirical formulas of Khosla’s and Joglekar’s.
    Keywords absorption ; color ; reflectance ; satellites ; sediments ; water storage ; India ; ArcGIS ; normalized difference water index (ndwi) ; samrat ashok sagar reservoir ; satellite images ; sedimentation
    Language English
    Dates of publication 2023-0101
    Size p. 71-79.
    Publishing place Taylor & Francis
    Document type Article ; Online
    ISSN 2164-3040
    DOI 10.1080/09715010.2021.1975318
    Database NAL-Catalogue (AGRICOLA)

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