OlagueG. Multiobjective sensor planning for accurate reconstruction. In: OlagueG (ed.) Evolutionary computer vision: the first footprints. Berlin: Springer Berlin Heidelberg, 2016, pp.273–326.
2.
EvdokimenkovVNKimNVKozorezDA, et al. Control of unmanned aerial vehicles during fire situation monitoring. INCAS Bulletin2019; 11: 67–73.
3.
EberhardPSchiehlenWBestleD. Some advantages of stochastic methods in multicriteria optimization of multibody systems. Arch Appl Mech1999; 69: 543–554.
4.
TopolskyNGTarakanovDVMikhailovKA. Theoretical foundations of fire department management support based on monitoring the dynamics of a fire in a building. Moscow: Academy of State Fire Service of EMERCOM of Russia, 2019.
5.
KoskiJ. Multicriterion structural optimization. In: RozvanyGIN (ed.) Optimization of large structural systems. Dordrecht: Springer Netherlands, 1993, pp.793–809.
6.
BabaytsevADobryanskiyVSolyaevY. Optimization of thermal protection panels subjected to intense heating and mechanical loading. Lobachevskii J Math2019; 40: 887–895.
7.
MokshantsevAVTopolskyNGHoangTT. A model of an information system for supporting management decision-making during prospecting in a fire. In: SuprunovskiiAM (ed.) Historical experience, current problems and prospects of educational and scientific activities in the field of fire safety: a collection of abstracts of reports of an international scientific and practical conference. Moscow: Academy of State Fire Service of EMERCOM of Russia, 2018, pp.543–547.
8.
StatnikovRBMatusovJB. Examples of multicriteria optimization of machines and other complex systems. In: StatnikovRBMatusovJB (eds) Multicriteria optimization and engineering. Boston: Springer US, 1995, pp.153–189.
9.
ForyśASnaminaJ. Multicriteria optimization of parametrically excited systems against loss of dynamic stability. Struct Optim1998; 16: 269–274.
SorokinAEBulychevSNNovikovSV, et al. Information science in occupational safety management. Russian Eng Res2019; 39: 324–329.
12.
GöpfertATammerC. Maximal point theorems in product spaces and applications for multicriteria approximation problems. In: HaimesYYSteuerRE (eds) Research and practice in multiple criteria decision making. Berlin: Springer Berlin Heidelberg, 2000, pp.93–104.
13.
TravissS. Accessibility of metro Vancouver fire-fighters following a damaging earthquake: A case study. J Bus Continuity & Emerg Plann. 2019; 13: 52–66.
14.
TopolskyNGTarakanovDVMikhailovKA, et al. Improving the information support of fire reconnaissance groups during its monitoring in the building using infrared technologies. Fire & Explos Saf2019; 28: 89–97.
15.
VlacicLB. Multicriteria-based decision making models for computer integrated enterprise. In: BernusPNemesL (eds) Modelling and methodologies for enterprise integration: proceedings of the IFIP TC5 working conference on models and methodologies for enterprise integration, Queensland, Australia, November 1995. Boston: Springer US, 1996, pp.103–112.
16.
KalabaRTesfatsionL. An organizing principle for dynamic estimation. J Optim Theory Appl1990; 64: 445–470.
17.
BestieDEberhardP.Dynamic system design via multicriteria optimization. In: FandelGGalT (eds) Multiple criteria decision making. Berlin: Springer Berlin Heidelberg, 1997, pp.467–478.
18.
AzizLRaghaySAznaouiH.An improved multipath routing protocol using an efficient multicriteria sorting method. In: Ben AhmedMBoudhirAAYounesA (eds) Innovations in smart cities applications, edition 2. Cham: Springer International Publishing, 2019, pp.837–849.
19.
GarciaCBotellaGAyusoF, et al. Multi-GPU based on multicriteria optimization for motion estimation system. EURASIP J Adv Signal Process2013; 23: 1–12.
20.
LiXLiZCaoZ, et al. Modeling drivers’ memory of daily repetitive stimuli in traffic scenes. Cognit Tech Work2018; 20: 389–399.
21.
TarakanovDV. The method of multicriteria selection of firefighters’ traffic routes in buildings during fire fighting. Technosphere Saf Tech2016; 4: 120–128.
NoghinVD. Decision-making based on information quanta: methodology and practice. In: NoghinVD (ed.) Reduction of the pareto set: an axiomatic approach. Cham: Springer International Publishing, 2018, pp.179–222.
24.
GusevMI. On the class of dynamic multicriteria problems in the design of experiments. In: LewandowskiAStanchevI (eds) Methodology and software for interactive decision support. Berlin: Springer Berlin Heidelberg, 1989, pp.32–38.
25.
CrayD. The use of symbols in multicriteria decision making. In: LockettAGIsleiG (eds) Improving decision making in organisations. Berlin: Springer Berlin Heidelberg, 1989, pp.100–111.
26.
SchyAAGiesyDP. Multicriteria optimization methods for design of aircraft control systems. In: StadlerW (ed.) Multicriteria optimization in engineering and in the sciences. Boston: Springer US, 1988, pp.225–262.
27.
dos SantosRRSteffenVde SaramagoSFP. Robot path planning in a constrained workspace by using optimal control techniques. Multibody Syst Dyn2008; 19: 159–177.
28.
StadlerWJohnsonA. Multicriteria optimal design of a dynamically responsive safety chair. In: BestleDSchiehlenW (eds) IUTAM symposium on optimization of mechanical systems. Dordrecht: Springer Netherlands, 1996, pp. 293–301.