scholarly journals Machine learning for predicting the average length of vertically aligned TiO2 nanotubes

AIP Advances ◽  
2020 ◽  
Vol 10 (7) ◽  
pp. 075116
Author(s):  
Jesús Caro-Gutiérrez ◽  
Félix F. González-Navarro ◽  
Mario A. Curiel-Álvarez ◽  
Oscar M. Peréz-Landeros ◽  
Benjamín Valdez-Salas ◽  
...  
2008 ◽  
Vol 112 (38) ◽  
pp. 14786-14795 ◽  
Author(s):  
Guohua Zhao ◽  
Yanzhu Lei ◽  
Yonggang Zhang ◽  
Hongxu Li ◽  
Meichuan Liu

2019 ◽  
Vol 162 ◽  
pp. 82-87 ◽  
Author(s):  
Jesús Caro-Gutiérrez ◽  
Oscar M. Peréz-Landeros ◽  
Félix F. González-Navarro ◽  
Mario A. Curiel-Álvarez ◽  
Benjamín Valdez-Salas ◽  
...  

2019 ◽  
Author(s):  
Sriram K Vidyarthi ◽  
Rakhee Tiwari ◽  
Samrendra K Singh

AbstractAfter harvesting almond crop, accurate measurement of almond kernel sizes is a significant specification to plan, develop and enhance almond processing operations. The size and mass of the individual almond kernels are vital parameters usually associated with almond quality, particularly head almond yield. In this study, we propose a novel methodology that combines image processing and machine-learning ensemble that accurately measures the size and mass of whole raw almond kernels (classification - Nonpareil) simultaneously. We have developed an image-processing algorithm using recursive method to identify the individual almond kernels from an image and estimate the size of the kernels based on the occupied pixels by a kernel. The number of pixels representing an almond kernel was used as its digital fingerprint to predict its size and mass. Various popular machine learning (ML) models were implemented to build a stacked ensemble model (SEM), predicting the mass of the individual almond kernels based on the features derived from the pixels of the individual kernels in the image. The prediction accuracy and robustness of image processing and SEM were analyzed using uncertainty quantification. The mean error in estimating the average length of 1000 almond kernel was 3.12%. Similarly, mean errors associated with predicting the 1000 kernel mass were 0.63%. The developed algorithm in almond imaging in this study can be used to facilitate a rapid almond yield and quality appraisals.


Author(s):  
Peter Bartlett ◽  
Ursula Eberhardt ◽  
Nicole Schütz ◽  
Henry Beker

Attempts to use machine learning (ML) for species identification of macrofungi have usually involved the use of image recognition to deduce the species from photographs, sometimes combining this with collection metadata. Our approach is different: we use a set of quantified morphological characters (for example, the average length of the spores) and locality (GPS coordinates). Using this data alone, the machine can learn to differentiate between species. Our case study is the genus Hebeloma, fungi within the order Agaricales, where species determination is renowned as a difficult problem. Whether it is as a result of recent speciation, the plasticity of the species, hybridization or stasis is a difficult question to answer. What is sure is that this has led to difficulties with species delimitation and consequently a controversial taxonomy. The Hebeloma Project—our attempt to solve this problem by rigorously understanding the genus—has been evolving for over 20 years. We began organizing collections in a database in 2003. The database now has over 10,000 collections, from around the world, with not only metadata but also morphological descriptions and photographs, both macroscopic and microscopic, as well as molecular data including at least an internal transcribed spacer (ITS) sequence (generally, but not universally, accepted as a DNA barcode marker for fungi (Schoch et al. 2012)), and in many cases sequences of several loci. Included within this set of collections are almost all type specimens worldwide. The collections on the database have been analysed and compared. The analysis uses both the morphological and molecular data as well as information about habitat and location. In this way, almost all collections are assigned to a species. This development has been enabled and assisted by citizen scientists from around the globe, collecting and recording information about their finds as well as preserving material. From this database, we have built a website, which updates as the database updates. The website (hebeloma.org) is currently undergoing beta testing prior to a public launch. It includes up-to-date species descriptions, which are generated by amalgamating the data from the collections of each species in the database. Additional tools allow the user to explore those species with similar habitat preferences, or those from a particular biogeographic area. The user is also able to compare a range of characters of different species via an interactive plotter. The ML-based species identifier is featured on the website. The standardised storage of the collection data on the database forms the backbone for the identifier. A portion of the collections on the database are (almost) randomly selected as a training set for the learning phase of the algorithm. The learning is “supervised” in the sense that collections in the training set have been pre-assigned to a species by expert analysis. With the learning phase complete, the remainder of the database collections may then be used for testing. To use the species identifier on the website, a user inputs the same small number of morphological characters used to train the tool and it promptly returns the most likely species represented, ranked in order of probability. As well as describing the neural network behind the species identifier tool, we will demonstrate it in action on the website, present the successful results it has had in testing to date and discuss its current limitations and possible generalizations.


Small ◽  
2011 ◽  
Vol 7 (17) ◽  
pp. 2405-2405 ◽  
Author(s):  
Vardan Galstyan ◽  
Alberto Vomiero ◽  
Isabella Concina ◽  
Antonio Braga ◽  
Mariangela Brisotto ◽  
...  

2016 ◽  
Vol 52 (95) ◽  
pp. 13807-13810 ◽  
Author(s):  
Soon Woo Kwon ◽  
Ming Ma ◽  
Myung Jin Jeong ◽  
Kan Zhang ◽  
Sung June Kim ◽  
...  

Herein, we designed vertically aligned TiO2 nanotube arrays, in which a very thin disordered overlayer approximately a few nm thick was formed via a room-temperature solution process.


Children ◽  
2020 ◽  
Vol 8 (1) ◽  
pp. 1
Author(s):  
Harpreet Singh ◽  
Satoshi Kusuda ◽  
Ryan M. McAdams ◽  
Shubham Gupta ◽  
Jayant Kalra ◽  
...  

Our objective in this study was to determine if machine learning (ML) can automatically recognize neonatal manipulations, along with associated changes in physiological parameters. A retrospective observational study was carried out in two Neonatal Intensive Care Units (NICUs) between December 2019 to April 2020. Both the video and physiological data (heart rate (HR) and oxygen saturation (SpO2)) were captured during NICU hospitalization. The proposed classification of neonatal manipulations was achieved by a deep learning system consisting of an Inception-v3 convolutional neural network (CNN), followed by transfer learning layers of Long Short-Term Memory (LSTM). Physiological signals prior to manipulations (baseline) were compared to during and after manipulations. The validation of the system was done using the leave-one-out strategy with input of 8 s of video exhibiting manipulation activity. Ten neonates were video recorded during an average length of stay of 24.5 days. Each neonate had an average of 528 manipulations during their NICU hospitalization, with the average duration of performing these manipulations varying from 28.9 s for patting, 45.5 s for a diaper change, and 108.9 s for tube feeding. The accuracy of the system was 95% for training and 85% for the validation dataset. In neonates <32 weeks’ gestation, diaper changes were associated with significant changes in HR and SpO2, and, for neonates ≥32 weeks’ gestation, patting and tube feeding were associated with significant changes in HR. The presented system can classify and document the manipulations with high accuracy. Moreover, the study suggests that manipulations impact physiological parameters.


Author(s):  
Savo Tomovic

In this paper the problem of measuring factor importance on patient length of stay in an emergency department is discussed. Historical dataset contains average patient length of stay per day. Factors are agreed with domain expert. The task is to provide factors? impact measure on specific day that does not belong to the historical dataset (new observation) and average length of stay for that day is higher than specified threshold. Observations are represented as multidimensional numeric vectors. Each dimension represents factor. The basic idea consists of identifying appropriate neighbourhood and measure distances between the new observation and its neighbourhood in the historical dataset with respect to each factor. Impact measure of a factor is derived from the Error Sum of Squares. Factor impact is proportional to distance between the observation and its neighbourhood with respect to the dimension representing that factor. Nearest neighbour and clustering methods for neighbourhood determination are considered.


Author(s):  
Tran Duc Khanh ◽  
Vu Ha Giang ◽  
Trinh Thi Phong Huong ◽  
Vu Thanh Luan ◽  
Nguyen Thi Lan ◽  
...  

Titanium dioxide (TiO2) is widely applied in the field of pollution treatment due to its good catalytic properties and being an environmentally friendly material. In this study, TiO2 nanotubes were prepared from commercial TiO2 particles. The effects of carboxymethyl cellulose (CMC) and liquid glass (sodium silicate) on catalyst activity and catalyst adhesion on quartz tubes were investigated. Transmission microscopy (TEM), scanning microscope (SEM), X-ray diffraction (XRD), X-ray energy dispersive spectroscopy, Fourier transform infrared spectroscopy (FT-IR) were used for the characterization of the catalyst. In this study, the ethanol degradation ability of the catalyst, which was added with 0; 0.5; 1, and 1.5% liquid glass and calcined at 400 and 500oC, was determined. TiO2 nanotubes after preparation have a uniform diameter from 10-12 nm and an average length of about 150nm, specific surface area increases markedly compared to commercial granules (nearly 15 times). The results showed that CMC plays an important role in the thickness and distribution of TiO2 on the quartz surface. Liquid glass significantly affects the ethanol degradation efficiency.


Sign in / Sign up

Export Citation Format

Share Document