In this study, a comprehensive model for an industrial low-density polyethylene (LDPE) tubular reactor is
presented. The model parameters are tuned using industrial data on the temperature profile, the monomer
conversion and the number-average molecular weight at the end of the reactor, and estimates of the several
side products from the reactor. Complete details of the model are provided. Thereafter, a two-objective
optimization of this LDPE reactor is performed; the monomer conversion is maximized while the sum of the
normalized concentrations of the three important side products (methyl, vinyl, and vinylidene groups) is
minimized. Three variants of the binary-coded non-dominated sorting genetic algorithmnamely, NSGA-II,
NSGA-II-JG, and NSGA-II-aJGare used to solve the optimization problem. The decision variables used
for optimization include the following: the feed flow rates of the three initiators and of the transfer agent, the
inlet temperature, the inlet pressure, and the average temperatures of the fluids in the five jackets. Also, the
temperature of the reaction mass is constrained to lie below a safe value. An equality constraint is used for
the number-average molecular weight (M
n,f) of the product, to ensure product quality. Pareto-optimal solutions
are obtained. It is observed that the algorithms converge to erroneous local optimal solutions when hard
equality constraints such as M
n,f = desired number-average molecular weight (M
n,d) are used. Correct global
optimal Pareto sets are obtained by assembling appropriate solutions from several problems involving softer
constraints of the type M
n,f = M
n,d ± an arbitrary number. Furthermore, the binary-coded NSGA-II-aJG and
NSGA-II-JG perform better than NSGA-II near the hard end-point constraints. The solution of a four-objective
problem (with each of the three normalized side product concentrations taken individually as objective functions)
is comparable to that of the two-objective problem, and the former (more) computationally intensive problem
does not need to be solved.
A novel series of hybrid molecules were designed and synthesized by fusing the pharmacophoric features of cholinesterase inhibitor donepezil and diarylthiazole as potential multitarget-directed ligands for the treatment of Alzheimer's disease (AD). The compounds showed significant in vitro anticholinesterase (anti-ChE) activity, the most potent compound (44) among them showing the highest activity (IC50 value of 0.30 ± 0.01 μM) for AChE and (1.84 ± 0.03 μM) for BuChE. Compound 44 showed mixed inhibition of AChE in the enzyme kinetic studies. Some compounds exhibited moderate to high inhibition of AChE-induced Aβ1-42 aggregation and noticeable in vitro antioxidant and antiapoptotic properties. Compound 44 showed significant in vivo anti-ChE and antioxidant activities. Furthermore, compound 44 demonstrated in vivo neuroprotection by decreasing Aβ1-42-induced toxicity by attenuating abnormal levels of Aβ1-42, p-Tau, cleaved caspase-3, and cleaved PARP proteins. Compound 44 exhibited good oral absorption and was well tolerated up to 2000 mg/kg, po, dose without showing toxic effects.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.