175 research outputs found
Synthesis of Ultra-High-Molecular-Weight Polyethylene by Transition-Metal-Catalyzed Precipitation Polymerization
Ultra-high-molecular-weight polyethylene
(UHMWPE) plays an important
role in many important fields as engineering plastics. In this contribution,
a precipitation polymerization strategy is developed by combination
of highly active phosphino-phenolate nickel catalysts with polymer-insoluble
solvent (heptane) to access UHMWPE (Mn up to 8.3 × 106 g mol–1) with
good product morphology, free-flowing characteristics, and great mechanical
properties. Compared with the academically commonly used aromatic
solvent (toluene), the utilization of heptane offers simultaneous
enhancement in important parameters including activity, polymer molecular
weight, and catalyst thermal stability. This system can also generate
polar functionalized UHMWPE with molecular weight of up to 1.6 ×
106 g mol–1 in the copolymerization of
ethylene with polar comonomers. More importantly, this precipitation
polymerization strategy is generally applicable to several representative
transition metal catalyst systems, leading to UHMWPE synthesis with
good product morphology control
Mutual information distribution.
<p>A) Distribution of mutual information in SORN with plasticity in the first block of training. B) Distribution of mutual information in SORN with plasticity after training (last block), which becomes higher with training compared with the first block. C) Distribution of mutual information in SORN without STDP and IP plasticity.</p
Structure of Self-Organizing Recurrent Neural Network (SORN).
<p>Input units (cyan) directly receive external input in a non-overlapping way and connect to other excitatory reservoir units (blue). Excitatory reservoir units are also connected to inhibitory units, as well as the output units. The weights between the reservoir units and the output units are trained with supervised methods.</p
Analysis of changes in input weight vectors over training.
<p>(A) Euclidean distance of all 300 weight vectors from the initial weight across training in Experiment 1 [<a href="http://www.ploscompbiol.org/article/info:doi/10.1371/journal.pcbi.1005632#pcbi.1005632.ref024" target="_blank">24</a>] projected into the space of the first three PCs of all weight vectors. The blue part of each curves corresponds to training on sequence S1 and the red part corresponds to training on sequence S2. (B) Change in angle of the weights versus the total distance of the weights to the initial weight across training in Experiment 1. The angle was computed through the dot product in the full 300 dimensional space of weights. The total distance of weights was computed as the Euclidean distance of the weight vectors to the initial weight vector . The blue data points correspond to the respective values after the first 1600 training steps and the red data points correspond to the weights after the last training step. The black data points correspond to the changes in angle versus distance in weights across training after switching from sequence S1 to sequence S2. Panels (C,D) as Panel (A, B) but for the data of Experiment 2 [<a href="http://www.ploscompbiol.org/article/info:doi/10.1371/journal.pcbi.1005632#pcbi.1005632.ref025" target="_blank">25</a>].</p
Selectivity indices of neurons in SORN network.
<p>(A) Distribution of selectivity indices in SORN with plasticity in the first block of training. (B) Distribution of selectivity indices in SORN with plasticity after training (last block), which becomes higher with training compared with the first block. (C) Distribution of selectivity indices in SORN without STDP and IP plasticity. A value of zero indicates that the neuron has identical responses to all stimuli; a value of 1 indicates activation by one stimulus and silence to all other stimuli. In SORN, neurons are firing highly selectively, with the indices reaching values between 0.9 and 1.0.</p
Seperability of SORN with all three plasticity mechanisms turned on (solid) or with STDP and IP turned off (dotted).
<p>To be intuitively comparable to experimental data, the Y-axis is plotted upside-down.</p
The joint probability between inputs and neuron firing.
<p>The vertical axis corresponds to the network’s 300 model neurons, and the horizontal axis corresponds to the input sequence element of the total length 20. (A) Joint probability of inputs and neuron firing in SORN with plasticity in the first block of training. (B) Joint probability of inputs and neuron firing in SORN with plasticity in the last block of training. Compared with the left subplot, the joint probability becomes higher with training and the firing of neurons is sparse. (C) Joint probability of inputs and neuron firing in SORN without STDP and IP.</p
Anterograde and retrograde facilitation and interference effects across task similiarities and training schedules.
<p>A) Network performance as a function of the number of training trials for interleaved training with low task similarity. B) Performance for blocked training with low task similarity. C) Performance for interleaved training with high task similarity. D) Performance for blocked training with high task similarity. E) Anterograde effects in learning as quantified by the difference in error rates between the first 10 training trials on task S2 and the first 10 training trials on task S1. F) Retrograde effects in learning as quantified by the difference in error rates between the end of training task S1 and testing on S1 after training on all tasks. Note that facilitation effects correspond to positive values while interference effects correspond to negative values in both E) and F).</p
Ground-State Proton Transfer Kinetics in Green Fluorescent Protein
Proton
transfer plays an important role in the optical properties
of green fluorescent protein (GFP). While much is known about excited-state
proton transfer reactions (ESPT) in GFP occurring on ultrafast time
scales, comparatively little is understood about the factors governing
the rates and pathways of ground-state proton transfer. We have utilized
a specific isotopic labeling strategy in combination with one-dimensional <sup>13</sup>C nuclear magnetic resonance (NMR) spectroscopy to install
and monitor a <sup>13</sup>C directly adjacent to the GFP chromophore
ionization site. The chemical shift of this probe is highly sensitive
to the protonation state of the chromophore, and the resulting spectra
reflect the thermodynamics and kinetics of the proton transfer in
the NMR line shapes. This information is complemented by time-resolved
NMR, fluorescence correlation spectroscopy, and steady-state absorbance
and fluorescence measurements to provide a picture of chromophore
ionization reactions spanning a wide time domain. Our findings indicate
that proton transfer in GFP is described well by a two-site model
in which the chromophore is energetically coupled to a secondary site,
likely the terminal proton acceptor of ESPT, Glu222. Additionally,
experiments on a selection of GFP circular permutants suggest an important
role played by the structural dynamics of the seventh β-strand
in gating proton transfer from bulk solution to the buried chromophore
Effect of initial total solids concentration on volatile fatty acid production from food waste during anaerobic acidification
<div><p>The effect of initial total solids (TS) concentration on volatile fatty acid (VFAs) production from food waste under mesophilic conditions (35 °C) was determined. VFAs concentration and composition, biogas production, soluble chemical oxygen demand concentration, TS and volatile solids (VS) reduction, and ammonia nitrogen release were investigated. The VFAs concentrations were 26.10, 39.68, 59.58, and 62.64 g COD/L at TS contents of 40, 70, 100, and 130 g/L, respectively. While the VFAs’ yields ranged from 0.467 to 0.799 g COD/g VS<sub>fed</sub>, decreased as initial TS increased. The percentage of propionate was not affected by TS concentration, accounting for 30.19–34.86% of the total VFAs, while a higher percentage of butyrate and lower percentage of acetate was achieved at a higher TS concentration. Biogas included mainly hydrogen and carbon dioxide and the maximum hydrogen yield of 148.9 ml/g VS<sub>fed</sub> was obtained at 130 g TS/L. concentration, TS and VS reductions increased as initial TS increased. Considering the above variables, we conclude that initial TS of 100 g/L shall be the most appropriate to VFAs production.</p></div
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