ExamplesBiologyAnimal markings, segmentation of animals, phyllotaxis, neuronal activation patterns like tonotopy, Predator-prey equations' trajectories. In developmental biology, pattern formation describes the mechanism by which initially equivalent cells in a developing tissue assume complex forms and functions by coordinated cell fate control [1][2]. Pattern formation is genetically controlled, and often involves each cell in a field sensing and responding to its position along a morphogen gradient, followed by short distance cell-to-cell communication through cell signaling pathways to refine the initial pattern. In this context, a field of cells is the group of cells whose fates are affected by responding to the same set positional information cues. Anterior-posterior axis patterning in DrosophilaOne of the best understood examples of pattern formation is the patterning along the future head to tail (antero-posterior) axis of the fruit fly Drosophila melanogaster. The development of Drosophila is particularly well studied, and it is representative of a major class of animals, the insects or insecta. Other multicellular organisms sometimes use similar mechanisms for axis formation, although the relative importance of signal transfer between the earliest cells of many developing organisms is greater than in the example described here. Growth of Bacterial ColoniesBacterial colonies show a large variety of beautiful patterns formed during colony growth. Experiments show that the resulting shapes depend on the growth conditions. In particular stresses (hardness of the culture medium, lack of nutrients, etc) seem to enhance the complexity of the resulting patterns. Chemistrysee reaction-diffusion systems and Turing patterns PhysicsBénard cells, Laser, cloud formations in stripes or rolls. Ripples in icicles. Washboard patterns on dirtroads. Computer graphicsSome types of automata have been used to generate organic-looking textures for more realistic shading of 3d objects [3] [4]. A popular photoshop plugin, KPT 6 included a filter called 'KPT reaction' that produced reaction-diffusion style patterns based on a seed image. A similar effect can also be achieved, with a little patience, by repeatedly sharpening and then blurring an image in many graphics applications. If other filters are used, such as emboss or edge detection different types of effects can be achieved. AnalysisThe analysis of pattern-forming systems often consists of finding a PDE model of the system (the Swift-Hohenberg equation is one such model) of the form where F is generically a nonlinear differential operator, and postulating solutions of the form where the zj are complex amplitudes associated to different modes in the solution and the Symmetry considerations can now be taken into account, and evolution equations obtained for the complex amplitudes governing the solution. This reduction puts the problem into the form of a system of first-order ODEs, which can be analysed using standard methods (see dynamical systems). The same formalism can also be used to analyse bifurcations in pattern-forming systems, for example to analyse the formation of convection rolls in a Rayleigh-Bénard experiment as the temperature is increased. Such analysis predicts many of the quantitative features of such experiments - for example, the ODE reduction predicts hysteresis in convection experiments as patterns of rolls and hexagons compete for stability. The same hysteresis has been observed experimentally. See also
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